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@Comment [[file:vickers.org::*Wang2009624 - Application of fractal dimension and co-occurrence matrices algorithm in material vickers hardness image segmentation][Wang2009624 - Application of fractal dimension and co-occurrence matrices algorithm in material vickers hardness image segmentation:1]]
@CONFERENCE{Wang2009624,
author = {Wang, Guitang and Zhu, Jianlin and Cao, Peiliang},
title = {Application of fractal dimension and co-occurrence matrices algorithm in material vickers hardness image segmentation},
year = {2009},
journal = {3rd International Symposium on Intelligent Information Technology Application, IITA 2009},
volume = {3},
pages = {624 627},
doi = {10.1109/IITA.2009.167},
url = {https://www.scopus.com/inward/record.uri?eid=2-s2.0-77649306252&doi=10.1109%2fIITA.2009.167&partnerID=40&md5=4849475b47bfd9d8908ace4918e28070},
abstract = {The algorithm of fractal dimension and co-occurrence matrices is proposed and is applied to material Vickers hardness image segmentation. Based on the characteristics of the indentation images, this article uses texture features to extract the indentation silhouette from the point view of texture segmentation. We adopt fractal dimension and co-occurrence matrix algorithm to describe the texture characteristics of the indentation image, forming a n-dimensional feature vector, introducing EPNSQ to smooth the features. Finally we combine with the k-means clustering algorithm to get texture segmentation result. The experiment demonstrates that in the material Vickers hardness image segmentation the proposed algorithm was significantly effective and robust. © 2009 IEEE.},
author_keywords = {Co-occurrence matrices; Fractal dimension; K-means clustering; Textural segmentation; Vickers hardness indentation},
keywords = {Cobalt compounds; Digital image storage; Feature extraction; Fractal dimension; Image segmentation; Information technology; Partial discharges; Textures; Vickers hardness; Vickers hardness testing; Water supply systems; Co-occurrence matrices; Co-occurrence-matrix; K-means clustering; Textural segmentation; Vickers hardness indentation; Clustering algorithms},
type = {Conference paper},
publication_stage = {Final},
source = {Scopus},
note = {Cited by: 1}
}
@Comment Wang2009624 - Application of fractal dimension and co-occurrence matrices algorithm in material vickers hardness image segmentation:1 ends here
@Comment [[file:vickers.org::*Filho2010 - Brinell and Vickers hardness measurement using image processing and analysis techniques][Filho2010 - Brinell and Vickers hardness measurement using image processing and analysis techniques:1]]
@ARTICLE{Filho2010,
author = {Filho, Pedro Pedrosa Rebouças and Da Silveira Cavalcante, Tarique and De Albuquerque, Victor Hugo C. and Tavares, João Manuel R. S.},
title = {Brinell and Vickers hardness measurement using image processing and analysis techniques},
year = {2010},
journal = {Journal of Testing and Evaluation},
volume = {38},
number = {1},
doi = {10.1520/JTE102220},
url = {https://www.scopus.com/inward/record.uri?eid=2-s2.0-77953261780&doi=10.1520%2fJTE102220&partnerID=40&md5=aa15ade4858326835c57be5e43afef81},
abstract = {Mechanical hardness testing is fundamental in the evaluation of the mechanical properties of metallic materials due to the fact that the hardness values allow one to determine the wear resistance of the material involved, as well as the approximate values of its ductility and flow tension, among a number of other key characteristics. As a result, the main objective of the present work has been the development and analysis of a computational methodology capable of determining the Brinell and Vickers hardness values from hardness indentation images, which are based on image processing and analysis algorithms. In order to validate the methodology that has been developed, comparisons of the results resulting from the consideration of ten indentation image samples obtained through the conventional manual hardness measurement approach and a computational methodology have been carried out. This analysis allows one to conclude that the semi-automatic measurement of Vickers and Brinell hardnesses by the computational approach is easier, faster, and less dependent on the operator's subjectivity. Copyright © 2010 by ASTM International.},
author_keywords = {Computational system; Computational vision; Histogram binarization; Image segmentation; Indentation images; Manual hardness measurement; Region growing; Testing and evaluation},
keywords = {Digital image storage; Graphic methods; Image segmentation; Imaging systems; Materials properties; Materials testing; Mathematical operators; Mechanical properties; Vickers hardness; Vickers hardness testing; Wear resistance; Binarizations; Computational system; Computational vision; Hardness measurement; Histogram binarization; Region growing; Testing and evaluation; Measurements},
type = {Article},
publication_stage = {Final},
source = {Scopus},
note = {Cited by: 37}
}
@Comment Filho2010 - Brinell and Vickers hardness measurement using image processing and analysis techniques:1 ends here
@Comment [[file:vickers.org::*Gadermayr2012149 - Image segmentation of vickers indentations using shape from focus][Gadermayr2012149 - Image segmentation of vickers indentations using shape from focus:1]]
@ARTICLE{Gadermayr2012149,
author={Gadermayr, Michael and Uhl, Andreas},
title={Image segmentation of vickers indentations using shape from focus},
year={2012},
journal={Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics)},
volume={7324 LNCS},
number={PART 1},
pages={149157},
doi={10.1007/978-3-642-31295-3_18},
url={https://www.scopus.com/inward/record.uri?eid=2-s2.0-84864128731&doi=10.1007%2f978-3-642-31295-3_18&partnerID=40&md5=7adb00f5fd3df6de04ae8cf17e3e478f},
abstract={To measure the hardness of a material, an indenter is pressed into the material and the deformation is measured. As we focus on Vickers hardness testing, our exercise is to compute the diagonal lengths of a square indentation. We especially investigate if it is possible to reconstruct the shape of the indentation by the use of the Shape-from-Focus method. We show that the shape information alone does not contain enough information for a robust segmentation. However, we incorporate the depth information into an effective existing approach and achieve significantly better results. © 2012 Springer-Verlag.},
keywords={Image analysis; Image segmentation; Vickers hardness testing; Depth information; Indenters; Robust segmentation; Shape from focus; Shape information; Vickers indentation; Indentation},
type={Conference paper},
publication_stage={Final},
source={Scopus},
note={Cited by: 2}
}
@Comment Gadermayr2012149 - Image segmentation of vickers indentations using shape from focus:1 ends here
@Comment [[file:vickers.org::*Wang2012451 - Unsupervised texture segmentation based on redundant wavelet transform][Wang2012451 - Unsupervised texture segmentation based on redundant wavelet transform:1]]
@ARTICLE{Wang2012451,
author = {Wang, Guitang and Liu, Wenjuan and Wang, Ruihuang and Huang, Xiaowu and Wang, Feng},
title = {Unsupervised texture segmentation based on redundant wavelet transform},
year = {2012},
journal = {Advances in Intelligent and Soft Computing},
volume = {116 AISC},
number = {VOL. 1},
pages = {451 456},
doi = {10.1007/978-3-642-11276-8_59},
url = {https://www.scopus.com/inward/record.uri?eid=2-s2.0-84862107805&doi=10.1007%2f978-3-642-11276-8_59&partnerID=40&md5=095db16f45c7e484bf58140a5f052ee5},
abstract = {The algorithm of Redundant Wavelet Transform (RWT) and laws texture measurement is proposed and applied to image segmentation. Based on the characteristics of the indentation images, this article uses texture features to extract the indentation silhouette from the point view of texture segmentation. We adopt Redundant Wavelet Transform and laws texture measurement algorithm to describe the texture characteristics of the indentation image, forming a n-dimensional feature vector, introducing texture features smoothing algorithm based on quadrant to smooth the features. Finally we combine with the improved k-means clustering algorithm to get texture segmentation result. The experiment demonstrates that in the material Vickers hardness image segmentation the proposed algorithm was significantly effective and robust. © 2012 Springer-Verlag Berlin Heidelberg.},
author_keywords = {improved k-means clustering algorithm; laws texture measurement; RWT; Texture segmentation},
keywords = {Algorithms; Image texture; Textures; Wavelet transforms; Feature vectors; K-Means clustering algorithm; Redundant wavelet transform; RWT; Smoothing algorithms; Texture characteristics; Texture features; Texture measurement; Texture segmentation; Unsupervised texture segmentation; Image segmentation},
type = {Conference paper},
publication_stage = {Final},
source = {Scopus},
note = {Cited by: 0}
}
@Comment Wang2012451 - Unsupervised texture segmentation based on redundant wavelet transform:1 ends here
@Comment [[file:vickers.org::*Gadermayr2012468 - The impact of unfocused Vickers indentation images on the segmentation performance][Gadermayr2012468 - The impact of unfocused Vickers indentation images on the segmentation performance:1]]
@ARTICLE{Gadermayr2012468,
author = {Gadermayr, Michael and Maier, Andreas and Uhl, Andreas},
title = {The impact of unfocused Vickers indentation images on the segmentation performance},
year = {2012},
journal = {Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics)},
volume = {7432 LNCS},
number = {PART 2},
pages = {468 478},
doi = {10.1007/978-3-642-33191-6_46},
url = {https://www.scopus.com/inward/record.uri?eid=2-s2.0-84866707751&doi=10.1007%2f978-3-642-33191-6_46&partnerID=40&md5=e296307bc7cb04a2677e812877b0867e},
abstract = {Whereas common Vickers indentation segmentation algorithms are precise with high quality images, low quality images often cannot be segmented appropriately. We investigate an approach, where unfocused images are segmented. On the one hand, the segmentation accuracy of low quality images can be improved. On the other hand we aim in reducing the overall runtime of the hardness testing method. We introduce one approach based on single unfocused images and one gradual enhancement approach based on image series. © 2012 Springer-Verlag.},
keywords = {Artificial intelligence; High quality images; Image series; Low qualities; Runtimes; Segmentation accuracy; Segmentation algorithms; Segmentation performance; Vickers indentation; Image segmentation},
type = {Conference paper},
publication_stage = {Final},
source = {Scopus},
note = {Cited by: 2}
}
@Comment Gadermayr2012468 - The impact of unfocused Vickers indentation images on the segmentation performance:1 ends here
@Comment [[file:vickers.org::*Gadermayr2012362 - Dual-resolution active contours segmentation of vickers indentation images with shape prior initialization][Gadermayr2012362 - Dual-resolution active contours segmentation of vickers indentation images with shape prior initialization:1]]
@ARTICLE{Gadermayr2012362,
author = {Gadermayr, Michael and Uhl, Andreas},
title = {Dual-resolution active contours segmentation of vickers indentation images with shape prior initialization},
year = {2012},
journal = {Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics)},
volume = {7340 LNCS},
pages = {362 369},
doi = {10.1007/978-3-642-31254-0_41},
url = {https://www.scopus.com/inward/record.uri?eid=2-s2.0-84865682634&doi=10.1007%2f978-3-642-31254-0_41&partnerID=40&md5=25ee8d6f32287c4d6d1b1105e04e4a1d},
abstract = {Vickers microindentation imagery is segmented using the Chan-Vese level-set approach. In order to find a suitable initialization, we propose to apply a Shape-Prior gradient descent approach to a significantly resolution-reduced image. Subsequent local Hough transform leads to a very high accuracy of the overall approach. © 2012 Springer-Verlag.},
keywords = {Hough transforms; Signal processing; Active contours; Gradient descent; Level set approach; Shape priors; Vickers indentation; Vickers microindentation; Image segmentation},
type = {Conference paper},
publication_stage = {Final},
source = {Scopus},
note = {Cited by: 4; All Open Access, Bronze Open Access}
}
@Comment Gadermayr2012362 - Dual-resolution active contours segmentation of vickers indentation images with shape prior initialization:1 ends here
@Comment [[file:vickers.org::*Macedo2006287 - Using Hough transform as an auxiliary technique for Vickers hardness measurement][Macedo2006287 - Using Hough transform as an auxiliary technique for Vickers hardness measurement:1]]
@ARTICLE{Macedo2006287,
author={Macedo, M. and Mendes, V.B. and Conci, A. and Leta, F.R.},
title={Using hough transform as an auxiliary technique for vickers hardness measurement},
journal={Proceedings of the 13th International Conference on Systems, Signals and Image Processin (IWSSIP'06)},
year={2006},
pages={287-290},
note={cited By 12},
}
@Comment Macedo2006287 - Using Hough transform as an auxiliary technique for Vickers hardness measurement:1 ends here
@Comment [[file:vickers.org::*Mendes2003992 - Automatic measurement of Brinell and Vickers hardness using computer vision techniques][Mendes2003992 - Automatic measurement of Brinell and Vickers hardness using computer vision techniques:1]]
@ARTICLE{Mendes2003992,
author={Mendes, V. and Leta, F.},
title={Automatic measurement of Brinell and Vickers hardness using computer vision techniques},
journal={Proceedings of the XVII IMEKO World Congress},
year={2003},
pages={992-995},
note={cited By 16},
}
@Comment Mendes2003992 - Automatic measurement of Brinell and Vickers hardness using computer vision techniques:1 ends here
@Comment [[file:vickers.org::*Chan2001266 - Active contours without edges][Chan2001266 - Active contours without edges:1]]
@ARTICLE{Chan2001266,
author={Chan, T.F. and Vese, L.A.},
title={Active contours without edges},
journal={IEEE Transactions on Image Processing},
year={2001},
volume={10},
number={2},
pages={266-277},
doi={10.1109/83.902291},
note={cited By 9291},
}
@Comment Chan2001266 - Active contours without edges:1 ends here
@Comment [[file:vickers.org::*Cohen1991211 - On active contour models and balloons][Cohen1991211 - On active contour models and balloons:1]]
@ARTICLE{Cohen1991211,
author={Cohen, L.D.},
title={On active contour models and balloons},
journal={CVGIP: Image Understanding},
year={1991},
volume={53},
number={2},
pages={211-218},
doi={10.1016/1049-9660(91)90028-N},
note={cited By 1828},
}
@Comment Cohen1991211 - On active contour models and balloons:1 ends here
@Comment [[file:vickers.org::*Gadermayr20131183 - Active contours methods with respect to Vickers indentations][Gadermayr20131183 - Active contours methods with respect to Vickers indentations:1]]
@ARTICLE{Gadermayr20131183,
author = {Gadermayr, Michael and Maier, Andreas and Uhl, Andreas},
title = {Active contours methods with respect to Vickers indentations},
year = {2013},
journal = {Machine Vision and Applications},
volume = {24},
number = {6},
pages = {1183 1196},
doi = {10.1007/s00138-012-0478-5},
url = {https://www.scopus.com/inward/record.uri?eid=2-s2.0-84880824940&doi=10.1007%2fs00138-012-0478-5&partnerID=40&md5=7eae8fca4224ccd8fffb1e0ba41c7d93},
abstract = {We investigate different Vickers indentation segmentation methods and especially concentrate on active contours approaches as these techniques are known to be precise state of the art segmentation methods. Particularly, different kinds of level set-based methods which are improvements of the traditional active contours are analyzed. In order to circumvent the initialization problem of active contours, we separate the segmentation process into two stages. For the first stage, we introduce an approach which approximately locates the indentations with a high certainty. The results achieved with this method serve as initializations for the precise active contours (second stage). This two-stage approach delivers highly precise results for most real world indentation images. However, there are images, which are very difficult to segment. To handle even such images, our segmentation method is incorporated with the Shape from Focus approach, by including 3D information. In order to decrease the overall runtime, moreover, a gradual enhancement approach based on unfocused images is introduced. With three different databases, we compare the proposed methods and we show that the segmentation accuracy of these methods is highly competitive compared with other approaches in the literature. © 2012 Springer-Verlag Berlin Heidelberg.},
author_keywords = {Active contours; Focus; Shape Prior; Vickers},
keywords = {Focusing; Indentation; Numerical methods; Active contours; Initialization Problem; Segmentation accuracy; Segmentation methods; Segmentation process; Shape priors; Two-stage approaches; Vickers; Image segmentation},
type = {Article},
publication_stage = {Final},
source = {Scopus},
note = {Cited by: 10}
}
@Comment Gadermayr20131183 - Active contours methods with respect to Vickers indentations:1 ends here
@Comment [[file:vickers.org::*Nayar1992302 - Shape from focus system][Nayar1992302 - Shape from focus system:1]]
@CONFERENCE{Nayar1992302,
author={Nayar, S.K.},
title={Shape from focus system},
journal={Proceedings of the IEEE Computer Society Conference on Computer Vision and Pattern Recognition},
year={1992},
volume={1992-June},
pages={302-308},
doi={10.1109/CVPR.1992.223259},
art_number={223259},
note={cited By 100},
}
@Comment Nayar1992302 - Shape from focus system:1 ends here
@Comment [[file:vickers.org::*Harada2010492 - Robust method for position measurement of vertex of polyhedron using shape from focus][Harada2010492 - Robust method for position measurement of vertex of polyhedron using shape from focus:1]]
@ARTICLE{Harada2010492,
author={Harada, T.},
title={Robust method for position measurement of vertex of polyhedron using shape from focus},
journal={Journal of Advanced Mechanical Design, Systems and Manufacturing},
year={2010},
volume={4},
number={2},
pages={492-503},
doi={10.1299/jamdsm.4.492},
note={cited By 1},
}
@Comment Harada2010492 - Robust method for position measurement of vertex of polyhedron using shape from focus:1 ends here
@Comment [[file:vickers.org::*Osher198812 - Fronts propagating with curvature-dependent speed: Algorithms based on Hamilton-Jacobi formulations][Osher198812 - Fronts propagating with curvature-dependent speed: Algorithms based on Hamilton-Jacobi formulations:1]]
@ARTICLE{Osher198812,
author={Osher, S. and Sethian, J.A.},
title={Fronts propagating with curvature-dependent speed: Algorithms based on Hamilton-Jacobi formulations},
journal={Journal of Computational Physics},
year={1988},
volume={79},
number={1},
pages={12-49},
doi={10.1016/0021-9991(88)90002-2},
note={cited By 11814},
}
@Comment Osher198812 - Fronts propagating with curvature-dependent speed: Algorithms based on Hamilton-Jacobi formulations:1 ends here
@Comment [[file:vickers.org::*Cremers2007195 - A review of statistical approaches to level set segmentation: Integrating color, texture, motion and shape][Cremers2007195 - A review of statistical approaches to level set segmentation: Integrating color, texture, motion and shape:1]]
@ARTICLE{Cremers2007195,
author={Cremers, D. and Rousson, M. and Deriche, R.},
title={A review of statistical approaches to level set segmentation: Integrating color, texture, motion and shape},
journal={International Journal of Computer Vision},
year={2007},
volume={72},
number={2},
pages={195-215},
doi={10.1007/s11263-006-8711-1},
note={cited By 856},
}
@Comment Cremers2007195 - A review of statistical approaches to level set segmentation: Integrating color, texture, motion and shape:1 ends here
@Comment [[file:vickers.org::*LimaMoreira2016294 - A novel Vickers hardness measurement technique based on Adaptive Balloon Active Contour Method][LimaMoreira2016294 - A novel Vickers hardness measurement technique based on Adaptive Balloon Active Contour Method:1]]
@ARTICLE{LimaMoreira2016294,
author = {Lima Moreira, Francisco Diego and Kleinberg, Maurício Nunes and Arruda, Hemerson Furtado and Costa Freitas, Francisco Nélio and Valente Parente, Marcelo Monteiro and De Albuquerque, Victor Hugo Costa and Rebouças Filho, Pedro Pedrosa},
title = {A novel Vickers hardness measurement technique based on Adaptive Balloon Active Contour Method},
year = {2016},
journal = {Expert Systems with Applications},
volume = {45},
pages = {294 306},
doi = {10.1016/j.eswa.2015.09.025},
url = {https://www.scopus.com/inward/record.uri?eid=2-s2.0-84946234376&doi=10.1016%2fj.eswa.2015.09.025&partnerID=40&md5=db1918b7a7f7a4e31a52b0837821fa93},
abstract = {Among the forms of assessment of materials to use in a particular application there is the measuring systems of Vickers hardness. This measurement is performed manually by experts, being very interpretative and subjective, which usually leads to variability of the Vickers hardness value between observers and even for the same observer. The experience of the skilled in measurement will determine if the material can be used for an application or not. There are some works use traditional methods to perform the measurement of Vickers hardness for Digital Image Processing (DIP). This work's main objective has been to propose a new methodology capable of determining the Vickers Hardness testing values from indentation images by using the Adaptive Balloon Active Contour Methods. The results of the hardness measurement using the Adaptive Balloon Active Contour Method (ABACM) were significant compared to other methods, by observing the MSE obtained from the measured Vickers hardness, the value by obtained ABACM method is three times lower than the Region Growing method, and five times lower than Watershed method. In addition, the measurement method was carried out in 1.2 ± 0.3 s. The proposed method stands out for not requiring pre-processing and post-processing steps, because its mathematical formulation is robust to noise in this application. It is worth highlighting que Significantly cam close to the two specialists, Demonstrating que can be used to aid in measuring the Vickers hardness. © 2015 Elsevier Ltd. All rights reserved.},
author_keywords = {Active Contour Method; Adaptive Balloon; Image segmentation; Vickers hardness},
keywords = {Balloons; Image processing; Image segmentation; Vickers hardness testing; Active contour method; Digital image processing (DIP); Hardness measurement; Mathematical formulation; Measurement methods; Measuring systems; Region growing methods; Vickers hardness measurements; Vickers hardness},
type = {Article},
publication_stage = {Final},
source = {Scopus},
note = {Cited by: 31}
}
@Comment LimaMoreira2016294 - A novel Vickers hardness measurement technique based on Adaptive Balloon Active Contour Method:1 ends here
@Comment [[file:vickers.org::*Li20241 - Lightweight Segmentation Neural Networks for Measuring Vickers Hardness][Li20241 - Lightweight Segmentation Neural Networks for Measuring Vickers Hardness:1]]
@ARTICLE{Li20241,
author={Li, Zexian and Cai, Chenglin and Yin, Feng and Guan, Wenhui and Fang, Yun},
title={Lightweight Segmentation Neural Networks for Measuring Vickers Hardness},
year={2024},
journal={IEEE Transactions on Instrumentation and Measurement},
volume={73},
pages={19},
doi={10.1109/TIM.2023.3343788},
url={https://www.scopus.com/inward/record.uri?eid=2-s2.0-85182355288&doi=10.1109%2fTIM.2023.3343788&partnerID=40&md5=61e46553223ac203e083bfb1caa97d9f},
abstract={— The automatic measurement algorithm for Vickers hardness indentation has been widely applied. Among these, the neural network-based method has received attention for its excellent segmentation performance. However, high storage space and computation requirements hinder its promotion on edge computing devices. To address this issue, this study proposes two lightweight Vickers indentation segmentation networks: VSNLite4M and VSNLite1M. Compared with previous methods, the proposed networks achieve a reduction of 35.2× in terms of computational cost with up to 38× fewer parameters, while maintaining the same level of segmentation accuracy. © 2023 IEEE. Personal use is permitted, but republication/redistribution requires IEEE permission.},
author_keywords={Automatic measurement; hardness testing; image segmentation; neural network; Vicker hardness},
keywords={Edge computing; Feature extraction; Image segmentation; Job analysis; Vickers hardness; Automatic measurements; Convolutional neural network; Edge computing; Features extraction; Images segmentations; Length measurement; Neural-networks; Task analysis; Vicker hardness; Neural networks},
type={Article},
publication_stage={Final},
source={Scopus},
note={Cited by: 0}
}
@Comment Li20241 - Lightweight Segmentation Neural Networks for Measuring Vickers Hardness:1 ends here
@Comment [[file:vickers.org::*Chen20221043 - Automatic Measurement Algorithm for Brinell Indentations Based on Convolutional Neural Network][Chen20221043 - Automatic Measurement Algorithm for Brinell Indentations Based on Convolutional Neural Network:1]]
@ARTICLE{Chen20221043,
author={Chen, Y. and Fang, Q. and Tian, H. and Li, S. and Song, Z. and Li, J.},
title={Automatic Measurement Algorithm for Brinell Indentations Based on Convolutional Neural Network},
journal={Sensors and Materials},
year={2022},
volume={34},
number={3},
pages={1043-1056},
doi={10.18494/SAM3780},
note={cited By 2},
}
@Comment Chen20221043 - Automatic Measurement Algorithm for Brinell Indentations Based on Convolutional Neural Network:1 ends here
@Comment [[file:vickers.org::*Tanaka2019 - Measuring Brinell hardness indentation by using a convolutional neural network][Tanaka2019 - Measuring Brinell hardness indentation by using a convolutional neural network:1]]
@ARTICLE{Tanaka2019,
author={Tanaka, Y. and Seino, Y. and Hattori, K.},
title={Measuring Brinell hardness indentation by using a convolutional neural network},
journal={Measurement Science and Technology},
year={2019},
volume={30},
number={6},
doi={10.1088/1361-6501/ab150f},
art_number={065012},
note={cited By 12},
}
@Comment Tanaka2019 - Measuring Brinell hardness indentation by using a convolutional neural network:1 ends here
@Comment [[file:vickers.org::*Cheng2022 - Vickers Hardness Value Test via Multi-Task Learning Convolutional Neural Networks and Image Augmentation][Cheng2022 - Vickers Hardness Value Test via Multi-Task Learning Convolutional Neural Networks and Image Augmentation:1]]
@ARTICLE{Cheng2022,
author={Cheng, W.-S. and Chen, G.-Y. and Shih, X.-Y. and Elsisi, M. and Tsai, M.-H. and Dai, H.-J.},
title={Vickers Hardness Value Test via Multi-Task Learning Convolutional Neural Networks and Image Augmentation},
journal={Applied Sciences (Switzerland)},
year={2022},
volume={12},
number={21},
doi={10.3390/app122110820},
art_number={10820},
note={cited By 12},
}
@Comment Cheng2022 - Vickers Hardness Value Test via Multi-Task Learning Convolutional Neural Networks and Image Augmentation:1 ends here
@Comment [[file:vickers.org::*Dovale-Farelo2022 - Vickers hardness prediction from machine learning methods][Dovale-Farelo2022 - Vickers hardness prediction from machine learning methods:1]]
@ARTICLE{Dovale-Farelo2022,
author={Dovale-Farelo, V. and Tavadze, P. and Lang, L. and Bautista-Hernandez, A. and Romero, A.H.},
title={Vickers hardness prediction from machine learning methods},
journal={Scientific Reports},
year={2022},
volume={12},
number={1},
doi={10.1038/s41598-022-26729-3},
art_number={22475},
note={cited By 1},
}
@Comment Dovale-Farelo2022 - Vickers hardness prediction from machine learning methods:1 ends here
@Comment [[file:vickers.org::*Jalilian20213 - Deep Learning Based Automated Vickers Hardness Measurement][Jalilian20213 - Deep Learning Based Automated Vickers Hardness Measurement:1]]
@ARTICLE{Jalilian20213,
author={Jalilian, E. and Uhl, A.},
title={Deep Learning Based Automated Vickers Hardness Measurement},
journal={Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics)},
year={2021},
volume={13053 LNCS},
pages={3-13},
doi={10.1007/978-3-030-89131-2_1},
note={cited By 5},
}
@Comment Jalilian20213 - Deep Learning Based Automated Vickers Hardness Measurement:1 ends here
@Comment [[file:vickers.org::*Cai2023 - Automatic Vickers Hardness Measurement With Neural Network Segmentation][Cai2023 - Automatic Vickers Hardness Measurement With Neural Network Segmentation:1]]
@ARTICLE{Cai2023,
author={Cai, C. and Li, Z. and Yin, F. and Wang, Z. and Chen, Y.},
title={Automatic Vickers Hardness Measurement With Neural Network Segmentation},
journal={IEEE Transactions on Instrumentation and Measurement},
year={2023},
volume={72},
doi={10.1109/TIM.2022.3227986},
art_number={2501111},
note={cited By 2},
}
@Comment Cai2023 - Automatic Vickers Hardness Measurement With Neural Network Segmentation:1 ends here
@Comment [[file:vickers.org::*Lin20175168 - RefineNet: Multi-path refinement networks for high-resolution semantic segmentation][Lin20175168 - RefineNet: Multi-path refinement networks for high-resolution semantic segmentation:1]]
@CONFERENCE{Lin20175168,
author={Lin, G. and Milan, A. and Shen, C. and Reid, I.},
title={RefineNet: Multi-path refinement networks for high-resolution semantic segmentation},
journal={Proceedings - 30th IEEE Conference on Computer Vision and Pattern Recognition, CVPR 2017},
year={2017},
volume={2017-January},
pages={5168-5177},
doi={10.1109/CVPR.2017.549},
note={cited By 2038},
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@Comment Lin20175168 - RefineNet: Multi-path refinement networks for high-resolution semantic segmentation:1 ends here
@Comment [[file:vickers.org::*Qin2020 - U2-Net: Going deeper with nested U-structure for salient object detection][Qin2020 - U2-Net: Going deeper with nested U-structure for salient object detection:1]]
@ARTICLE{Qin2020,
author={Qin, X. and Zhang, Z. and Huang, C. and Dehghan, M. and Zaiane, O.R. and Jagersand, M.},
title={U2-Net: Going deeper with nested U-structure for salient object detection},
journal={Pattern Recognition},
year={2020},
volume={106},
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art_number={107404},
note={cited By 893},
}
@Comment Qin2020 - U2-Net: Going deeper with nested U-structure for salient object detection:1 ends here
@Comment [[file:vickers.org::*Valanarasu2022 - UNeXt: MLP-based rapid medical image segmentation network][Valanarasu2022 - UNeXt: MLP-based rapid medical image segmentation network:1]]
@ARTICLE{Valanarasu2022,
author={Valanarasu, J.M.J. and Patel, V.M.},
journal={UNeXt: MLP-based rapid medical image segmentation network},
year={2022},
note={cited By 0},
}
@Comment Valanarasu2022 - UNeXt: MLP-based rapid medical image segmentation network:1 ends here
@Comment [[file:vickers.org::*Howard20191314 - Searching for mobileNetV3][Howard20191314 - Searching for mobileNetV3:1]]
@CONFERENCE{Howard20191314,
author={Howard, A. and Sandler, M. and Chen, B. and Wang, W. and Chen, L.-C. and Tan, M. and Chu, G. and Vasudevan, V. and Zhu, Y. and Pang, R. and Le, Q. and Adam, H.},
title={Searching for mobileNetV3},
journal={Proceedings of the IEEE International Conference on Computer Vision},
year={2019},
volume={2019-October},
pages={1314-1324},
doi={10.1109/ICCV.2019.00140},
art_number={9008835},
note={cited By 4146},
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@Comment Howard20191314 - Searching for mobileNetV3:1 ends here
@Comment [[file:vickers.org::*Mehta0000 - MobileViT: Light-weight, general-purpose, and mobile-friendly vision transformer][Mehta0000 - MobileViT: Light-weight, general-purpose, and mobile-friendly vision transformer:1]]
@ARTICLE{Mehta0000,
author={Mehta, S. and Rastegari, M.},
journal={MobileViT: Light-weight, general-purpose, and mobile-friendly vision transformer},
year={0000},
volume={2021},
note={cited By 0},
}
@Comment Mehta0000 - MobileViT: Light-weight, general-purpose, and mobile-friendly vision transformer:1 ends here
@Comment [[file:vickers.org::*He2016770 - Deep residual learning for image recognition][He2016770 - Deep residual learning for image recognition:1]]
@CONFERENCE{He2016770,
author={He, K. and Zhang, X. and Ren, S. and Sun, J.},
title={Deep residual learning for image recognition},
journal={Proceedings of the IEEE Computer Society Conference on Computer Vision and Pattern Recognition},
year={2016},
volume={2016-December},
pages={770-778},
doi={10.1109/CVPR.2016.90},
art_number={7780459},
note={cited By 130455},
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@Comment He2016770 - Deep residual learning for image recognition:1 ends here
@Comment [[file:vickers.org::*Sandler20184510 - MobileNetV2: Inverted Residuals and Linear Bottlenecks][Sandler20184510 - MobileNetV2: Inverted Residuals and Linear Bottlenecks:1]]
@CONFERENCE{Sandler20184510,
author={Sandler, M. and Howard, A. and Zhu, M. and Zhmoginov, A. and Chen, L.-C.},
title={MobileNetV2: Inverted Residuals and Linear Bottlenecks},
journal={Proceedings of the IEEE Computer Society Conference on Computer Vision and Pattern Recognition},
year={2018},
pages={4510-4520},
doi={10.1109/CVPR.2018.00474},
art_number={8578572},
note={cited By 13301},
}
@Comment Sandler20184510 - MobileNetV2: Inverted Residuals and Linear Bottlenecks:1 ends here
@Comment [[file:vickers.org::*Srinivas202116514 - Bottleneck transformers for visual recognition][Srinivas202116514 - Bottleneck transformers for visual recognition:1]]
@CONFERENCE{Srinivas202116514,
author={Srinivas, A. and Lin, T.-Y. and Parmar, N. and Shlens, J. and Abbeel, P. and Vaswani, A.},
title={Bottleneck transformers for visual recognition},
journal={Proceedings of the IEEE Computer Society Conference on Computer Vision and Pattern Recognition},
year={2021},
pages={16514-16524},
doi={10.1109/CVPR46437.2021.01625},
note={cited By 614},
}
@Comment Srinivas202116514 - Bottleneck transformers for visual recognition:1 ends here
@Comment [[file:vickers.org::*Zhou2020680 - Rethinking Bottleneck Structure for Efficient Mobile Network Design][Zhou2020680 - Rethinking Bottleneck Structure for Efficient Mobile Network Design:1]]
@ARTICLE{Zhou2020680,
author={Zhou, D. and Hou, Q. and Chen, Y. and Feng, J. and Yan, S.},
title={Rethinking Bottleneck Structure for Efficient Mobile Network Design},
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year={2020},
volume={12348 LNCS},
pages={680-697},
doi={10.1007/978-3-030-58580-8_40},
note={cited By 91},
}
@Comment Zhou2020680 - Rethinking Bottleneck Structure for Efficient Mobile Network Design:1 ends here
@Comment [[file:vickers.org::*He2016630 - Identity mappings in deep residual networks][He2016630 - Identity mappings in deep residual networks:1]]
@ARTICLE{He2016630,
author={He, K. and Zhang, X. and Ren, S. and Sun, J.},
title={Identity mappings in deep residual networks},
journal={Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics)},
year={2016},
volume={9908 LNCS},
pages={630-645},
doi={10.1007/978-3-319-46493-0_38},
note={cited By 5781},
}
@Comment He2016630 - Identity mappings in deep residual networks:1 ends here
@Comment [[file:vickers.org::*Dogan2022 - Automated accurate fire detection system using ensemble pretrained residual network][Dogan2022 - Automated accurate fire detection system using ensemble pretrained residual network:1]]
@ARTICLE{Dogan2022,
author={Dogan, S. and Datta Barua, P. and Kutlu, H. and Baygin, M. and Fujita, H. and Tuncer, T. and Acharya, U.R.},
title={Automated accurate fire detection system using ensemble pretrained residual network},
journal={Expert Systems with Applications},
year={2022},
volume={203},
doi={10.1016/j.eswa.2022.117407},
art_number={117407},
note={cited By 34},
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@Comment Dogan2022 - Automated accurate fire detection system using ensemble pretrained residual network:1 ends here
@Comment [[file:vickers.org::*Liang2020 - A transfer learning method with deep residual network for pediatric pneumonia diagnosis][Liang2020 - A transfer learning method with deep residual network for pediatric pneumonia diagnosis:1]]
@ARTICLE{Liang2020,
author={Liang, G. and Zheng, L.},
title={A transfer learning method with deep residual network for pediatric pneumonia diagnosis},
journal={Computer Methods and Programs in Biomedicine},
year={2020},
volume={187},
doi={10.1016/j.cmpb.2019.06.023},
art_number={104964},
note={cited By 259},
}
@Comment Liang2020 - A transfer learning method with deep residual network for pediatric pneumonia diagnosis:1 ends here
@Comment [[file:vickers.org::*Li20194277 - SIAMRPN++: Evolution of siamese visual tracking with very deep networks][Li20194277 - SIAMRPN++: Evolution of siamese visual tracking with very deep networks:1]]
@CONFERENCE{Li20194277,
author={Li, B. and Wu, W. and Wang, Q. and Zhang, F. and Xing, J. and Yan, J.},
title={SIAMRPN++: Evolution of siamese visual tracking with very deep networks},
journal={Proceedings of the IEEE Computer Society Conference on Computer Vision and Pattern Recognition},
year={2019},
volume={2019-June},
pages={4277-4286},
doi={10.1109/CVPR.2019.00441},
art_number={8954116},
note={cited By 1431},
}
@Comment Li20194277 - SIAMRPN++: Evolution of siamese visual tracking with very deep networks:1 ends here
@Comment [[file:vickers.org::*Bloice20194522 - Biomedical image augmentation using Augmentor][Bloice20194522 - Biomedical image augmentation using Augmentor:1]]
@ARTICLE{Bloice20194522,
author={Bloice, M.D. and Roth, P.M. and Holzinger, A.},
title={Biomedical image augmentation using Augmentor},
journal={Bioinformatics},
year={2019},
volume={35},
number={21},
pages={4522-4524},
doi={10.1093/bioinformatics/btz259},
note={cited By 170},
}
@Comment Bloice20194522 - Biomedical image augmentation using Augmentor:1 ends here
@Comment [[file:vickers.org::*Buslaev2020 - Albumentations: Fast and flexible image augmentations][Buslaev2020 - Albumentations: Fast and flexible image augmentations:1]]
@ARTICLE{Buslaev2020,
author={Buslaev, A. and Iglovikov, V.I. and Khvedchenya, E. and Parinov, A. and Druzhinin, M. and Kalinin, A.A.},
title={Albumentations: Fast and flexible image augmentations},
journal={Information (Switzerland)},
year={2020},
volume={11},
number={2},
doi={10.3390/info11020125},
art_number={125},
note={cited By 989},
}
@Comment Buslaev2020 - Albumentations: Fast and flexible image augmentations:1 ends here
@Comment [[file:vickers.org::*Gontarski2022 - Weightings on the Propagation of Errors in the Vickers Hardness Parameters][Gontarski2022 - Weightings on the Propagation of Errors in the Vickers Hardness Parameters:1]]
@ARTICLE{Gontarski2022,
author={Gontarski, T.L. and Leal, A.P. and Casali, R.M. and Braun, S.E. and Soares, P. and Fujarra, A.L.C. and Mikowski, A.},
title={Weightings on the Propagation of Errors in the Vickers Hardness Parameters},
journal={Brazilian Journal of Physics},
year={2022},
volume={52},
number={4},
doi={10.1007/s13538-022-01110-x},
art_number={107},
note={cited By 2},
}
@Comment Gontarski2022 - Weightings on the Propagation of Errors in the Vickers Hardness Parameters:1 ends here
@Comment [[file:vickers.org::*NoAuthor2018 - Metallic MaterialsVickers Hardness TestVerification and Calibration of Testing Machines][NoAuthor2018 - Metallic MaterialsVickers Hardness TestVerification and Calibration of Testing Machines:1]]
@ARTICLE{NoAuthor2018,
journal={Metallic MaterialsVickers Hardness TestVerification and Calibration of Testing Machines},
year={2018},
note={cited By 13},
}
@Comment NoAuthor2018 - Metallic MaterialsVickers Hardness TestVerification and Calibration of Testing Machines:1 ends here
@Comment [[file:vickers.org::*Dijmarescu2020 - Design and Development of a Software for the Estimation of the Vickers Hardness Measurement Uncertainty][Dijmarescu2020 - Design and Development of a Software for the Estimation of the Vickers Hardness Measurement Uncertainty:1]]
@CONFERENCE{Dijmarescu2020,
author={Dijmarescu, M.C. and Dijmarescu, M.R.},
title={Design and Development of a Software for the Estimation of the Vickers Hardness Measurement Uncertainty},
journal={IOP Conference Series: Materials Science and Engineering},
year={2020},
volume={916},
number={1},
doi={10.1088/1757-899X/916/1/012026},
art_number={012026},
note={cited By 3},
}
@Comment Dijmarescu2020 - Design and Development of a Software for the Estimation of the Vickers Hardness Measurement Uncertainty:1 ends here
@Comment [[file:vickers.org::*Elizabeth2019317 - Measurement Uncertainty Evaluation in Vickers Hardness Scale Using Law of Propagation of Uncertainty and Monte Carlo Simulation][Elizabeth2019317 - Measurement Uncertainty Evaluation in Vickers Hardness Scale Using Law of Propagation of Uncertainty and Monte Carlo Simulation:1]]
@ARTICLE{Elizabeth2019317,
author={Elizabeth, I. and Kumar, R. and Garg, N. and Asif, M. and Manikandan, R.M. and Girish and Titus, S.S.K.},
title={Measurement Uncertainty Evaluation in Vickers Hardness Scale Using Law of Propagation of Uncertainty and Monte Carlo Simulation},
journal={Mapan - Journal of Metrology Society of India},
year={2019},
volume={34},
number={3},
pages={317-323},
doi={10.1007/s12647-019-00341-9},
note={cited By 9},
}
@Comment Elizabeth2019317 - Measurement Uncertainty Evaluation in Vickers Hardness Scale Using Law of Propagation of Uncertainty and Monte Carlo Simulation:1 ends here
@Comment [[file:vickers.org::*Baldner2020265 - A Review on Computer Vision Applied to Mechanical Tests in Search for Better Accuracy][Baldner2020265 - A Review on Computer Vision Applied to Mechanical Tests in Search for Better Accuracy:1]]
@ARTICLE{Baldner2020265,
author={Baldner, F.O. and Costa, P.B. and Gomes, J.F.S. and Leta, F.R.},
title={A Review on Computer Vision Applied to Mechanical Tests in Search for Better Accuracy},
journal={Lecture Notes in Mechanical Engineering},
year={2020},
pages={265-281},
doi={10.1007/978-981-13-9806-3_9},
note={cited By 8},
}
@Comment Baldner2020265 - A Review on Computer Vision Applied to Mechanical Tests in Search for Better Accuracy:1 ends here
@Comment [[file:vickers.org::*Zexian2021 - A Novel coarse-to-fine Localization Algorithm for Automated Vickers Hardness Measurement][Zexian2021 - A Novel coarse-to-fine Localization Algorithm for Automated Vickers Hardness Measurement:1]]
@CONFERENCE{Zexian2021,
author={Zexian, L. and Feng, Y.},
title={A Novel coarse-to-fine Localization Algorithm for Automated Vickers Hardness Measurement},
journal={Journal of Physics: Conference Series},
year={2021},
volume={1996},
number={1},
doi={10.1088/1742-6596/1996/1/012001},
art_number={012001},
note={cited By 3},
}
@Comment Zexian2021 - A Novel coarse-to-fine Localization Algorithm for Automated Vickers Hardness Measurement:1 ends here
@Comment [[file:vickers.org::*Gadermayr2012 - Robust algorithm for automated microindentation measurement in Vickers hardness testing][Gadermayr2012 - Robust algorithm for automated microindentation measurement in Vickers hardness testing:1]]
@ARTICLE{Gadermayr2012,
author={Gadermayr, M. and Maier, A. and Uhl, A.},
title={Robust algorithm for automated microindentation measurement in Vickers hardness testing},
journal={Journal of Electronic Imaging},
year={2012},
volume={21},
number={2},
doi={10.1117/1.JEI.21.2.021109},
art_number={021109},
note={cited By 12},
}
@Comment Gadermayr2012 - Robust algorithm for automated microindentation measurement in Vickers hardness testing:1 ends here
@Comment [[file:vickers.org::*Maier2011295 - Robust automatic indentation localisation and size approximation for Vickers microindentation hardness indentations][Maier2011295 - Robust automatic indentation localisation and size approximation for Vickers microindentation hardness indentations:1]]
@CONFERENCE{Maier2011295,
author={Maier, A. and Uhl, A.},
title={Robust automatic indentation localisation and size approximation for Vickers microindentation hardness indentations},
journal={ISPA 2011 - 7th International Symposium on Image and Signal Processing and Analysis},
year={2011},
pages={295-300},
art_number={6046622},
note={cited By 12},
}
@Comment Maier2011295 - Robust automatic indentation localisation and size approximation for Vickers microindentation hardness indentations:1 ends here
@Comment [[file:vickers.org::*Fedotkin2021357 - Automatic Processing of Microhardness Images Using Computer Vision Methods][Fedotkin2021357 - Automatic Processing of Microhardness Images Using Computer Vision Methods:1]]
@ARTICLE{Fedotkin2021357,
author={Fedotkin, A.P. and Laktionov, I.V. and Kravchuk, K.S. and Maslenikov, I.I. and Useinov, A.S.},
title={Automatic Processing of Microhardness Images Using Computer Vision Methods},
journal={Instruments and Experimental Techniques},
year={2021},
volume={64},
number={3},
pages={357-362},
doi={10.1134/S0020441221030180},
note={cited By 5},
}
@Comment Fedotkin2021357 - Automatic Processing of Microhardness Images Using Computer Vision Methods:1 ends here
@Comment [[file:vickers.org::*Polanco2023 - Automatic Method for Vickers Hardness Estimation by Image Processing][Polanco2023 - Automatic Method for Vickers Hardness Estimation by Image Processing:1]]
@ARTICLE{Polanco2023,
author={Polanco, J.D. and Jacanamejoy-Jamioy, C. and Mambuscay, C.L. and Piamba, J.F. and Forero, M.G.},
title={Automatic Method for Vickers Hardness Estimation by Image Processing},
journal={Journal of Imaging},
year={2023},
volume={9},
number={1},
doi={10.3390/jimaging9010008},
art_number={8},
note={cited By 3},
}
@Comment Polanco2023 - Automatic Method for Vickers Hardness Estimation by Image Processing:1 ends here
@Comment [[file:vickers.org::*Zhao2021 - Automatic and Accurate Measurement of Microhardness Profile Based on Image Processing][Zhao2021 - Automatic and Accurate Measurement of Microhardness Profile Based on Image Processing:1]]
@ARTICLE{Zhao2021,
author={Zhao, Y.J. and Xu, W.H. and Xi, C.Z. and Liang, D.T. and Li, H.N.},
title={Automatic and Accurate Measurement of Microhardness Profile Based on Image Processing},
journal={IEEE Transactions on Instrumentation and Measurement},
year={2021},
volume={70},
doi={10.1109/TIM.2021.3067191},
art_number={9381729},
note={cited By 26},
}
@Comment Zhao2021 - Automatic and Accurate Measurement of Microhardness Profile Based on Image Processing:1 ends here
@Comment [[file:vickers.org::*Tanaka2018 - Vickers hardness measurement by using convolutional neural network][Tanaka2018 - Vickers hardness measurement by using convolutional neural network:1]]
@CONFERENCE{Tanaka2018,
author={Tanaka, Y. and Seino, Y. and Hattori, K.},
title={Vickers hardness measurement by using convolutional neural network},
journal={Journal of Physics: Conference Series},
year={2018},
volume={1065},
number={6},
doi={10.1088/1742-6596/1065/6/062001},
art_number={062001},
note={cited By 6},
}
@Comment Tanaka2018 - Vickers hardness measurement by using convolutional neural network:1 ends here
@Comment [[file:vickers.org::*Tanaka20201345 - Automated Vickers hardness measurement using convolutional neural networks][Tanaka20201345 - Automated Vickers hardness measurement using convolutional neural networks:1]]
@ARTICLE{Tanaka20201345,
author={Tanaka, Y. and Seino, Y. and Hattori, K.},
title={Automated Vickers hardness measurement using convolutional neural networks},
journal={International Journal of Advanced Manufacturing Technology},
year={2020},
volume={109},
number={5-6},
pages={1345-1355},
doi={10.1007/s00170-020-05746-4},
note={cited By 13},
}
@Comment Tanaka20201345 - Automated Vickers hardness measurement using convolutional neural networks:1 ends here
@Comment [[file:vickers.org::*Dominguez-Nicolas2021 - Algorithm for automatic detection and measurement of Vickers indentation hardness using image processing][Dominguez-Nicolas2021 - Algorithm for automatic detection and measurement of Vickers indentation hardness using image processing:1]]
@ARTICLE{Dominguez-Nicolas2021,
author={Domínguez-Nicolas, S.M. and Herrera-May, A.L. and García-González, L. and Zamora-Peredo, L. and Hernández-Torres, J. and Martínez-Castillo, J. and Morales-González, E.A. and Cerón-Álvarez, C.A. and Escobar-Pérez, A.},
title={Algorithm for automatic detection and measurement of Vickers indentation hardness using image processing},
year={2021},
journal={Measurement Science and Technology},
volume={32},
number={1},
doi={10.1088/1361-6501/abaa66},
url={https://www.scopus.com/inward/record.uri?eid=2-s2.0-85095813483&doi=10.1088%2f1361-6501%2fabaa66&partnerID=40&md5=845343f4d30261586943a8462c79efc2},
abstract={In this paper, we present a novel algorithm for the automatic detection and measurement of Vickers indentation hardness, using image processing. This algorithm uses image segmentation via binarization, automatically evaluating the mean and extreme gray values by means of standard histogram equalization so as to determine the optimal binarization threshold from each input image. We use a morphological filter and region growing to identify the indentation footprint. Our algorithm determines the four indentation vertices required to calculate diagonal lengths and Vickers hardness number. This algorithm is applied to 230 indentation images of steel-316 and hafnium nitride specimens, obtained using a micro hardness machine. The proposed algorithm can measure the Vickers hardness number of specimens using their indentation images. The algorithm results have a relative error of less than 3% with respect to those obtained through a conventional manual procedure. This algorithm can be used for indentation images with low contrast and irregular indentation edges. © 2020 IOP Publishing Ltd Printed in the UK},
author_keywords={Algorithm; Image processing; Indentation; Non-destructive testing; Vickers hardness},
keywords={Edge detection; Elastic moduli; Hafnium compounds; Image segmentation; Microhardness; Vickers hardness; Automatic Detection; Binarization threshold; Hafnium nitrides; Histogram equalizations; Indentation edge; Morphological filters; Vickers hardness numbers; Vickers indentation; Indentation},
type={Article},
publication_stage={Final},
source={Scopus},
note={Cited by: 7}
}
@Comment Dominguez-Nicolas2021 - Algorithm for automatic detection and measurement of Vickers indentation hardness using image processing:1 ends here
@Comment [[file:vickers.org::*Dominguez-Nicolas2018 - Indentation Image Analysis for Vickers Hardness Testing][Dominguez-Nicolas2018 - Indentation Image Analysis for Vickers Hardness Testing:1]]
@CONFERENCE{Dominguez-Nicolas2018,
author={Dominguez-Nicolas, Saul M. and Wiederhold, Petra},
title={Indentation Image Analysis for Vickers Hardness Testing},
year={2018},
journal={2018 15th International Conference on Electrical Engineering, Computing Science and Automatic Control, CCE 2018},
doi={10.1109/ICEEE.2018.8533881},
url={https://www.scopus.com/inward/record.uri?eid=2-s2.0-85058450690&doi=10.1109%2fICEEE.2018.8533881&partnerID=40&md5=c0246c530ebdd96633f00bcd79c00a05},
abstract={The paper presents a novel algorithm for detection and measurement of indentations in Vickers hardness testing images, within a specific case of applied research on material quality evaluation based on image processing. The algorithm performs image segmentation by binarization, morphological filtering, and region growing, where the binarization threshold is automatically obtained from the input image. After identification of the rhombus shaped indentation footprint, its four vertices are determined using corner detection, which are used to calculate the diagonal lengths and the Vickers hardness number. The proposed procedure has been tested on 185 images of real data obtained by the micro hardness machine Mitutoyo HM-124, mostly from Steel-316 specimens, but also from Hafnium Nitride. Test images include specular-polished and rough surfaces, specimen with artifacts or imperfections, indentations with deformed or damaged edges, and low contrast images. Ground true diagonal lengths obtained in the conventional manual manner by an expert were compared with the results determined by our method. The proposed method achieves competitive accuracy compared to the best known methods, but it is simpler and hence more efficient. © 2018 IEEE.},
author_keywords={Indentation image; Indentation vertex; Vickers hardness number; Vickers hardness test},
keywords={Automation; Edge detection; Elastic moduli; Hafnium compounds; Image segmentation; Microhardness; Process control; Vickers hardness; Vickers hardness testing; Applied research; Binarization threshold; Corner detection; Hafnium nitrides; Low contrast image; Material quality; Morphological filtering; Vickers hardness numbers; Indentation},
type={Conference paper},
publication_stage={Final},
source={Scopus},
note={Cited by: 9}
}
@Comment Dominguez-Nicolas2018 - Indentation Image Analysis for Vickers Hardness Testing:1 ends here
@Comment [[file:vickers.org::*Yao2006950 - A hardness measuring method based on Hough fuzzy vertex detection algorithm][Yao2006950 - A hardness measuring method based on Hough fuzzy vertex detection algorithm:1]]
@ARTICLE{Yao2006950,
author={Yao, L. and Fang, C.-H.},
title={A hardness measuring method based on Hough fuzzy vertex detection algorithm},
journal={IEEE Transactions on Industrial Electronics},
year={2006},
volume={53},
number={3},
pages={950-962},
doi={10.1109/TIE.2006.874259},
note={cited By 19},
}
@Comment Yao2006950 - A hardness measuring method based on Hough fuzzy vertex detection algorithm:1 ends here
@Comment [[file:vickers.org::*Ji2009 - A new method for automatically measurement of Vickers hardness using thick line Hough transform and least square method][Ji2009 - A new method for automatically measurement of Vickers hardness using thick line Hough transform and least square method:1]]
@CONFERENCE{Ji2009,
author={Ji, Y. and Xu, A.},
title={A new method for automatically measurement of Vickers hardness using thick line Hough transform and least square method},
journal={Proceedings of the 2009 2nd International Congress on Image and Signal Processing, CISP'09},
year={2009},
doi={10.1109/CISP.2009.5305653},
art_number={5305653},
note={cited By 21},
}
@Comment Ji2009 - A new method for automatically measurement of Vickers hardness using thick line Hough transform and least square method:1 ends here
@Comment [[file:vickers.org::*Kang2010337 - Conventional Vickers and true instrumented indentation hardness determined by instrumented indentation tests][Kang2010337 - Conventional Vickers and true instrumented indentation hardness determined by instrumented indentation tests:1]]
@ARTICLE{Kang2010337,
author={Kang, S.-K. and Kim, J.-Y. and Park, C.-P. and Kim, H.-U. and Kwon, D.},
title={Conventional Vickers and true instrumented indentation hardness determined by instrumented indentation tests},
journal={Journal of Materials Research},
year={2010},
volume={25},
number={2},
pages={337-343},
doi={10.1557/jmr.2010.0045},
note={cited By 48},
}
@Comment Kang2010337 - Conventional Vickers and true instrumented indentation hardness determined by instrumented indentation tests:1 ends here
@Comment [[file:vickers.org::*Gadermayr20127432 - The impact of unfocused Vickers indentation images on segmentation performance][Gadermayr20127432 - The impact of unfocused Vickers indentation images on segmentation performance:1]]
@ARTICLE{Gadermayr20127432,
author={Gadermayr, M and Maier, A and Uhl, A},
title={The impact of unfocused Vickers indentation images on segmentation performance},
journal={Advances in Visual Computing ISVC 2012 Lecture Notes Computer Science},
year={2012},
pages={7432},
note={cited By 1},
}
@Comment Gadermayr20127432 - The impact of unfocused Vickers indentation images on segmentation performance:1 ends here
@Comment [[file:vickers.org::*Maier2012123967509 - The AreaMap operator and its application to Vickers hardness testing images][Maier2012123967509 - The AreaMap operator and its application to Vickers hardness testing images:1]]
@ARTICLE{Maier2012123967509,
author={Maier, A and Uhl, A},
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@Comment [[file:vickers.org::*Maier2013 - Areamap and Gabor filter based Vickers hardness indentation measurement][Maier2013 - Areamap and Gabor filter based Vickers hardness indentation measurement:1]]
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@Comment Maier2013 - Areamap and Gabor filter based Vickers hardness indentation measurement:1 ends here
@Comment [[file:vickers.org::*Gadermayr2011 - Algorithms for microindentation measurement in automated Vickers hardness testing][Gadermayr2011 - Algorithms for microindentation measurement in automated Vickers hardness testing:1]]
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@Comment [[file:vickers.org::*Coelho2015249 - Automatic vickers microhardness measurement based on image analysis][Coelho2015249 - Automatic vickers microhardness measurement based on image analysis:1]]
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@Comment [[file:vickers.org::*Li2021 - Automated measurement of Vickers hardness using image segmentation with neural networks][Li2021 - Automated measurement of Vickers hardness using image segmentation with neural networks:1]]
@ARTICLE{Li2021,
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source = {Scopus},
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@Comment Li2021 - Automated measurement of Vickers hardness using image segmentation with neural networks:1 ends here
@Comment [[file:vickers.org::*Leta2015413 - Metrology by image: Discussing the accuracy of the results][Leta2015413 - Metrology by image: Discussing the accuracy of the results:1]]
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@Comment [[file:vickers.org::*Sugimoto1997696 - Development of an automatic Vickers hardness testing system using image processing technology][Sugimoto1997696 - Development of an automatic Vickers hardness testing system using image processing technology:1]]
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@Comment [[file:vickers.org::*Maier2012 - Efficient focus assessment for a computer vision-based Vickers hardness measurement system][Maier2012 - Efficient focus assessment for a computer vision-based Vickers hardness measurement system:1]]
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@Comment Maier2012 - Efficient focus assessment for a computer vision-based Vickers hardness measurement system:1 ends here
@Comment [[file:vickers.org::*Otsu197962 - THRESHOLD SELECTION METHOD FROM GRAY-LEVEL HISTOGRAMS.][Otsu197962 - THRESHOLD SELECTION METHOD FROM GRAY-LEVEL HISTOGRAMS.:1]]
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@Comment Otsu197962 - THRESHOLD SELECTION METHOD FROM GRAY-LEVEL HISTOGRAMS.:1 ends here