Citation: | FEI Wenqian, ZHAO Fengxia, DU Quanbin, WANG Qinghai. Diamond particle clarity detection method based on CBAM-ResNet50[J]. Diamond & Abrasives Engineering, 2024, 44(5): 588-598. doi: 10.13394/j.cnki.jgszz.2023.0153 |
[1] |
周青超, 沈锡田. 从专利角度分析人造金刚石技术的发展 [J]. 超硬材料工程,2021,33(5):29-36. doi: 10.3969/j.issn.1673-1433.2021.05.007
ZHOU Qingchao, SHEN Xitian. Analysis of the development of synthetic diamond technology from the perspective of patents [J]. Superhard Material Engineering,2021,33(5):29-36. doi: 10.3969/j.issn.1673-1433.2021.05.007
|
[2] |
熊辉. 基于模板匹配的金刚石颗粒图像识别 [D]. 成都: 四川大学, 2005.
XIONG Hui. The image recognition of the diamond particles based on the template matching [D]. Chengdou: Sichuan University, 2005.
|
[3] |
郭树青. 金刚石颗粒形貌检测系统关键技术研究 [D]. 郑州: 郑州大学, 2016.
GUO Shuqing. Research on the key technology of diamond particle morphology detection system [D]. Zhengzhou: Zhengzhou University, 2005.
|
[4] |
WANG W, CAI L. Inclusion extraction from diamond clarity images based on the analysis of diamond optical properties [J]. Optics Express,2019,27(19):27242. doi: 10.1364/OE.27.027242
|
[5] |
WANG W, CAI L. On the development of an effective image acquisition system for diamond quality grading [J]. Applied Optics,2018,57(33):9887-9897. doi: 10.1364/AO.57.009887
|
[6] |
石广丰, 王雪, 王淑坤, 等. 基于机器视觉的金刚石原石检测系统 [J]. 金刚石与磨料磨具工程,2019,39(6):7-12. doi: 10.13394/j.cnki.jgszz.2019.6.0002
SHI Guangfeng, WANG Xue, WANG Shukun, et al. Diamond raw detection system based on machine vision [J]. Diamond & Abrasives Engineering,2019,39(6):7-12. doi: 10.13394/j.cnki.jgszz.2019.6.0002
|
[7] |
狄超雄. 钻石净度检测系统研究 [D]. 武汉: 华中科技大学, 2021.
DI Chaoxiong. Research on diamond clarity detection system [D]. Wuhan: Huazhong University of Science & Technology, 2021.
|
[8] |
季长清, 高志勇, 秦静, 等. 基于卷积神经网络的图像分类算法综述 [J]. 计算机应用,2022,42(4):1044-1049. doi: 10.11772/j.issn.1001-9081.2021071273
JI Changqing, GAO Zhiyong, QIN Jing, et al. Review of image classification algorithms based on convolutional neural network [J]. Journal of Computer Applications,2022,42(4):1044-1049. doi: 10.11772/j.issn.1001-9081.2021071273
|
[9] |
邢延动, 李远. BP神经网络在金刚石锯片磨粒识别中的应用 [J]. 超硬材料过程,2014(1):1-4. doi: 10.3969/j.issn.1673-1433.2014.01.001
XING Yandong, LI Yuan. Application of BP neural network in diamond saw blade abrasive particle recognition [J]. Superhard Material Engineering,2014(1):1-4. doi: 10.3969/j.issn.1673-1433.2014.01.001
|
[10] |
潘秉锁, 潘文超, 刘子玉. 基于空洞卷积神经网络的金刚石图像语义分割 [J]. 金刚石与磨料磨具工程,2019,39(6):20-24. doi: 10.13394/j.cnki.jgszz.2019.6.0004
PAN Bingsuo, PAN Wenchao, LIU Ziyu. Semantic segmentation of diamond image using dilated convolutional neural network [J]. Diamond & Abrasives Engineering,2019,39(6):20-24. doi: 10.13394/j.cnki.jgszz.2019.6.0004
|
[11] |
林振坤. 基于深度学习的金刚石品质检测技术与实现 [D]. 郑州: 郑州航空工业管理学院, 2020.
LIN Zhenkun. Diamond quality detection technology and implementation based on deep learning [D]. Zhengzhou: Zhengzhou University of Aeronautics, 2020.
|
[12] |
杨建新, 兰小平, 赵振, 等. 基于改进郊狼算法与极限学习机的工业金刚石检测 [J]. 计算机集成制造系统,2023,29(2):449-459. doi: 10.13196/j.cims.2023.02.008
YANG Jianxin, LAN Xiaoping, ZHAO Zhen, et al. Industrial diamond detection method based on improved coyote optimization algorithm and extreme learning machine [J]. Computer Integrated Manufacturing Systems,2023,29(2):449-459. doi: 10.13196/j.cims.2023.02.008
|
[13] |
SANDLER M, HOWARD A, ZHU M, et al. MobileNetV2: Iinverted residuals and linear bottlenecks: 2018 IEEE conference on computer vision and pattern recognition (CVPR) [C]. Salt Lake: IEEE, 2018.
|
[14] |
HE K, ZHANG X, REN S, et al. Deep residual learning for image recognition: 2016 IEEE conference on computer vision and pattern recognition (CVPR) [C]. Las Vegas: IEEE, 2016.
|
[15] |
WOO S, PARK J, LEE J, et al. CBAM: Convolutional block attention module: European conference on computer vision (ECCV) [C]. Munich: CVPR, 2018.
|
[16] |
LIN T, DOLLAR P, GIRSHICK R, et al. Feature pyramid networks for object detection: 2017 IEEE conference on computer vision and pattern recognition (CVPR) [C]. Honolulu: IEEE, 2017.
|
[17] |
沈微微, 李颖, 杨志豪, 等. 防止过拟合的属性约简 [J]. 计算机应用研究,2020,37(9):2665-2668. doi: 10.19734/j.issn.1001-3695.2019.05.0116
SHEN Weiwei, LI Ying, YANG Zhihao, et al. Attribute reduction with avoiding overfitting [J]. Application Research of Computers,2020,37(9):2665-2668. doi: 10.19734/j.issn.1001-3695.2019.05.0116
|
[18] |
邓建国, 张素兰, 张继福, 等. 监督学习中的损失函数及应用研究 [J]. 大数据,2020,6(1):60-80. doi: 10.11959/j.issn.2096-0271.2020006
DENG Jianguo, ZHANG Sulan, ZHANG Jifu, et al. Loss function and application research in supervised learning [J]. Big Data Research,2020,6(1):60-80. doi: 10.11959/j.issn.2096-0271.2020006
|
[19] |
PAN S, YANG Q. A survey on transfer learning [J]. IEEE Transactions on Knowledge & Data Engineering,2010,22(10):1345-1359. doi: 10.1109/TKDE.2009.191
|
[20] |
SIMONYAN K, ZISSERMAN A. Very deep convolutional networks for large-scale image recognition: 3rd international conference on learning representations (ICLR 2015) [C]. San Diego: arXiv, 2015.
|
[21] |
KRIZHEVSKY A, SUTSKEVER I, HINTON G. ImageNet classification with deep convolutional neural networks: 25th international conference on neural Information processing systems (NeurIPS 2012) [C]. New York: Curran Associates Inc., 2012.
|