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Fiber Recognition Algorithm Based on Improved Mask RCNN

Published: 16 August 2023 Publication History

Abstract

In response to the application requirements of identifying and classifying multiple types of fibers, this paper proposes a fiber recognition algorithm based on improved Mask RCNN to achieve recognition and classification of multiple types of fibers, reduce the labor cost of fiber inspection, and improve inspection efficiency and quality. Firstly, a data augmentation strategy is adopted, which combines three data augmentation methods: RandomFlip, RandomCrop, and Cutout to achieve the best increase in network performance; Subsequently, a multi-scale training strategy is introduced to improve the model's training efficiency while also enhancing its robustness to scale; Finally, the attention mechanism module of convolutional blocks is added to solve the problem of low recognition and classification accuracy caused by small differences in fine-grained granularity between certain fiber classes. The experimental results show that the algorithm achieves a recognition and classification accuracy of 97.87% on the test set by introducing techniques such as data augmentation, multi-scale training, and CBAM, significantly improving the recognition and classification accuracy of various fiber targets.

References

[1]
National Bureau of Statistics of the People's Republic of China. China Statistical Yearbook [M]. Beijing: China Statistics Press, 2022: 396-397.
[2]
Li Yanhong, Ma Yan, Li Yaqiao. A review of methods for identification and inspection of cashmere and wool fibers [J]. China Fiber Inspection: 2012. (6): 58-61.
[3]
Ryder.M.L.Goat Fibre and Its Production[J].Proceeding of Eighth International Wool Textile Research Conference Christchurch.1990:2:241-266.
[4]
Wortmann F J, Arns W. Quantitative Fiber Mixture Analysis by Scanning Electron Microscopy: Part I: Blends of Mohair and Cashmere with Sheep's Wool[J]. Textile research journal, 1986, 56(7): 442-446.
[5]
Wortmann F J. SEM analysis of wool/specialty fiber blends-state of the art[J]. Schriften der Deutsches Wollforschungsinstitut, 1990, 106: 113-120.
[6]
Robson D, Weedal P J. Fiber measurement from SEM image using image processing and analysis techniques[J]. DWI, 1990, 121: 136.
[7]
Zoccola M, Lu N, Mossotti R, Identification of wool, cashmere, yak, and angora rabbit fibers and quantitative determination of wool and cashmere in blend: a near infrared spectroscopy study[J]. Fibers and Polymers, 2013, 14(8): 1283-1289.
[8]
Hamlyn P F, Nelson G, McCarthy B J. Wool-fibre identification by means of novel species-specific DNA probes[J]. Journal of the textile institute, 1992, 83(1): 97-103.
[9]
Chen Heng. Research on feature extraction and optimization based on cashmere and wool fiber digital images [D]. Beijing Institute of Fashion Technology, 2015.
[10]
Lukai. Research on Microscopic Visual Feature Expression and Recognition Algorithm of Cashmere Wool Fiber [D]. Donghua University, 2018.
[11]
Chai Xinyu. Identification of cashmere wool fibers based on SEM images [D]. Donghua University, 2018.
[12]
Kazim Yildiz. Identification of wool and mohair fibres with texture feature extraction and deep learning[J]. IET Image Processing,2020,14(2).
[13]
Xing Wenyu. Research and application of image-based wool and cashmere similar fiber recognition algorithm [D]. Shanghai University of Engineering and Technology, 2020.
[14]
You Xiaorong, Li Shufang. Using scale-invariant feature transformation and K-nearest neighbor algorithm to quickly and automatically identify cotton and wool fibers in blended fabrics [J]. Woolen Science and Technology, 2021, 49(08): 91-94. mfkj.20200901204.
[15]
Hinton G E, Osindero S, Teh Y W. A fast-learning algorithm for deep belief nets[J]. Neural computation, 2006, 18(7): 1527-1554.
[16]
Bengio Y, Courville A, Vincent P. Representation learning: A review and new perspectives[J]. IEEE transactions on pattern analysis and machine intelligence, 2013, 35(8): 1798-1828.
[17]
He K, Gkioxari G, Piotr Dollár, Mask R-CNN[J]. IEEE Transactions on Pattern Analysis & Machine Intelligence, 2017.
[18]
Kaiming He,Xiangyu Zhang,Shaoqing Ren,Jian Sun 0001. Deep Residual Learning for Image Recognition.[J]. CoRR,2015,abs/1512.03385.
[19]
Zhu Xiaohui, Qian Liping, Fu Wei. A Review of Image Data Enhancement Technology Research [J]. Software Guide, 2021,20(05):230-236.
[20]
Devries T, Taylor G W . Improved Regularization of Convolutional Neural Networks with Cutout[J]. 2017.
[21]
Zhu Nannan. Research on pedestrian detection based on residual module and multi-scale training [D]. Anhui Normal University, 2020.
[22]
Yu Peidong, Wang Xin, Jiang Gangwu, Liu Jianhui, Xu Baiqi. Bridge Detection Algorithm Combining Training Acceleration and Attention Mechanism [J]. Oceanographic Surveying and Mapping, 2021,41(03):57-61.
[23]
Chen Senqiu, Liu Wenbo, Zhang Gong. Mask Face Pose Classification Embedded with Dual-Scale Separate Convolution Block Attention Module [J]. Chinese Journal of Image and Graphics, 2022, 27(04): 1125-1136.
[24]
Woo S, Park J, Lee J Y, CBAM: Convolutional Block Attention Module[C]// European Conference on Computer Vision. Springer, Cham, 2018.
[25]
WOO S, PARK J, LEE J Y, Cbam: Convolutional block attention module[C]//Proceedings of the European conference on computer vision (ECCV). 2018: 3-19.

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          PRIS '23: Proceedings of the 2023 5th International Conference on Pattern Recognition and Intelligent Systems
          July 2023
          123 pages
          ISBN:9781450399968
          DOI:10.1145/3609703
          Permission to make digital or hard copies of all or part of this work for personal or classroom use is granted without fee provided that copies are not made or distributed for profit or commercial advantage and that copies bear this notice and the full citation on the first page. Copyrights for components of this work owned by others than the author(s) must be honored. Abstracting with credit is permitted. To copy otherwise, or republish, to post on servers or to redistribute to lists, requires prior specific permission and/or a fee. Request permissions from [email protected].

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          Published: 16 August 2023

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          Author Tags

          1. CBAM module
          2. deep learning
          3. multi fiber target recognition
          4. multi-scale training

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