• Laser & Optoelectronics Progress
  • Vol. 58, Issue 16, 1600007 (2021)
Yajun Chen1、*, Tingrong Wu1, Shuwei Shi2, Bo Zhao3, and Shuhan Yang1
Author Affiliations
  • 1Faculty of Printing, Packaging Engineering and Digital Media Technology, Xian University of Technology, Xian,Shaanxi 710054, China
  • 2Zhengzhou Cotton and Jute Engineering Technology and Design Research Institute, All China Federation of Supply and Marketing Cooperatives, Zhengzhou, Henan 450004, China
  • 3Chinese Academy of Agricultural Mechanization Sciences, Beijing 100083, China
  • show less
    DOI: 10.3788/LOP202158.1600007 Cite this Article Set citation alerts
    Yajun Chen, Tingrong Wu, Shuwei Shi, Bo Zhao, Shuhan Yang. Review of Cotton Foreign Fiber Detection Method Using Optical Imaging[J]. Laser & Optoelectronics Progress, 2021, 58(16): 1600007 Copy Citation Text show less
    References

    [1] Zhang H, Li D L. Applications of computer vision techniques to cotton foreign matter inspection: a review[J]. Computers and Electronics in Agriculture, 109, 59-70(2014).

    [2] Shi H Y. Application of computer vision technology in cotton foreign fiber detection[J]. Science and Technology Innovation Herald, 15, 127-128(2018).

    [3] Chen Z, Xing M J. Study development of cotton foreign fiber inspection method[J]. Cotton Textile Technology, 44, 77-81(2016).

    [4] Wang W Z. Discussion on testing technology of cotton foreign fiber content[J]. China Cotton Processing, 24-25(2019).

    [5] Chen B. Research on the testing technology of cotton foreign fiber content[J]. Modern Business Trade Industry, 39, 185-186(2018).

    [6] Shao Y T, Chen Y J, Ge C Y. Discussion on testing the content of foreign fiber in cotton[J]. Chinese & Foreign Entrepreneurs, 2019, 201.

    [7] Qiu J H. Pay more attention and strengthen to the foreign fiber testing in cotton[J]. China Fiber Inspection, 2020, 40-41.

    [8] Cai Y Y. A dissertation submitted in partial fulfillment of the requirements for the degree of master in engineering[D](2019).

    [9] Yue X. Research on multi-parameter optimization of heterogeneous fiber sorting machine detection rate based on neural network[D](2020).

    [10] Dong C Q, Du Y H, Ren W J et al. Research progress in optical imaging technology for detecting foreign fibers in cotton[J]. Journal of Textile Research, 41, 183-189(2020).

    [11] Song X H, Qi Q, Zhou X R et al. Detection of foreign fibers in cotton based on ultraviolet fluorography and image processing[J]. Shanghai Textile Science & Technology, 47, 86-88, 92(2019).

    [12] Zhou F, Ding T H. Detection of cotton lint trash within the ultraviolet: visible spectral range[J]. Applied Spectroscopy, 64, 936-941(2010).

    [13] Mustafic A, Li C Y, Haidekker M. Blue and UV LED-induced fluorescence in cotton foreign matter[J]. Journal of Biological Engineering, 8, 29(2014).

    [14] Mustafic A, Li C Y. Classification of cotton foreign matter using color features extracted from fluorescent images[J]. Textile Research Journal, 85, 1209-1220(2015).

    [15] Pai A, Sari-Sarraf H, Hequet E F. Recognition of cotton contaminants via X-ray microtomographic image analysis[J]. IEEE Transactions on Industry Applications, 40, 77-85(2004).

    [16] Pavani S K, Dogan M S, Sari-Sarraf H et al. Segmentation and classification of four common cotton contaminants in X-ray microtomographic images[J]. Proceedings of SPIE, 5303, 1-13(2004).

    [17] Dogan M S, Sari-Sarraf H, Hequet E F. Cotton trash assessment in radiographic X-ray images with scale-space filtering and stereo analysis[J]. Proceedings of SPIE, 5679, 276-287(2005).

    [18] Liu F, Su Z W, He X C et al. A laser imaging method for machine vision detection of white contaminants in cotton[J]. Textile Research Journal, 84, 1987-1994(2014).

    [19] Wang D, Yin B B, Liu X et al. Laser line scan imaging method for detection of white foreign fibers in cotton[J]. Transactions of the Chinese Society of Agricultural Engineering, 31, 310-314(2015).

    [20] Zhang L, Wei P, Wu J B et al. Detection method of foreign fibers in cotton based on illumination of line laser and LED[J]. Transactions of the Chinese Society of Agricultural Engineering, 32, 289-293(2016).

    [21] Wei P, Zhang L, Liu X et al. Detecting method of foreign fibers in seed cotton using double illumination imaging[J]. Journal of Textile Research, 38, 32-38(2017).

    [22] Fortier C A, Rodgers J E, Cintrón M S et al. Identification of cotton and cotton trash components by Fourier transform near-infrared spectroscopy[J]. Textile Research Journal, 81, 230-238(2011).

    [23] Tian L X, Fu W S, Liu J Y et al. Methods of foreign fiber detecting based on PCA analyzing of infrared spectral images[J]. Proceedings of SPIE, 9142, 914213(2014).

    [24] Cintrón M S, Rodgers J E. Identification of common cotton contaminants using an FTIR microscope with a focal plane array detector[J]. AATCC Journal of Research, 4, 12-17(2017).

    [25] Cai X X, Wu L L, Liang H F et al. Cotton foreign fiber detection based on near-infrared imaging technology[J]. Cotton Textile Technology, 49, 6-10(2021).

    [26] Liu L X, He D, Li M Z et al. Identification of Xinjiang jujube varieties based on hyperspectral technique and machine learning[J]. Chinese Journal of Lasers, 47, 1111002(2020).

    [27] Jiang Y, Li C Y. Detection and discrimination of cotton foreign matter using push-broom based hyperspectral imaging: system design and capability[J]. PLoS One, 10, e0121969(2015).

    [28] Zhang R Y, Li C Y, Zhang M Y et al. Shortwave infrared hyperspectral reflectance imaging for cotton foreign matter classification[J]. Computers and Electronics in Agriculture, 127, 260-270(2016).

    [29] Mustafic A, Jiang Y, Li C Y. Cotton contamination detection and classification using hyperspectral fluorescence imaging[J]. Textile Research Journal, 86, 1574-1584(2016).

    [30] Liu W, Shi Y, Tian H Q et al. Detection method for ginned cotton impurities based on hyperspectral reflection, transmission and reflection-transmission imaging mode[J]. Advanced Textile Technology, 27, 44-49(2019).

    [31] Wang L, Fang Y, Wang S C et al. Line-structured light imaging method of rail profile based on polarization fusion[J]. Acta Optica Sinica, 40, 2211001(2020).

    [32] Peng B, Huang S L, Li D J. Detection of colorless plastic contaminants hidden in cotton layer using chromatic polarization imaging[J]. Chinese Optics Letters, 13, 092901(2015).

    [33] Zhang C, Sun S L, Shi W X et al. Design and test of foreign fiber removal machine based on embedded system[J]. Transactions of the Chinese Society for Agricultural Machinery, 48, 43-52(2017).

    [34] Kuzy J, Li C Y. A pulsed thermographic imaging system for detection and identification of cotton foreign matter[J]. Sensors (Basel, Switzerland), 17, E518(2017).

    [35] Wu M H. Research on recognition algorithm of cotton foreign fibers based on image[D](2017).

    [36] Li L. Overview of research status of image segmentation[J]. Information Technology and Informatization, 85-87(2015).

    [37] Fang J J, Jiang Y, Yue J et al. A hybrid approach for efficient detection of plastic mulching films in cotton[J]. Mathematical and Computer Modelling, 58, 834-841(2013).

    [38] Wu Y T, Li D L, Li Z B et al. Fast processing of foreign fiber images by image blocking[J]. Information Processing in Agriculture, 1, 2-13(2014).

    [39] Wang X, Yang W Z, Li Z B. A fast image segmentation algorithm for detection of pseudo-foreign fibers in lint cotton[J]. Computers & Electrical Engineering, 46, 500-510(2015).

    [40] Yang C, Zhang Z. Research on image recognition method of foreign fibers in lint[C]. //2015 Seventh International Conference on Advanced Computational Intelligence (ICACI), March 27-29, 2015, Wuyi, China., 52-56(2015).

    [41] Zhang H X, Wang C, Liu X et al. Image edge detection algorithm and its new development[J]. Computer Engineering and Applications, 54, 11-18(2018).

    [42] Zhang Q, Yang J C, Teng T et al. Design of raw cotton foreign fibers detecting and clearing on line system[C]. //2012 7th International Conference on Computer Science & Education (ICCSE), July 14-17, 2012, Melbourne, VIC, Australia., 1223-1225(2012).

    [43] Lu X F, Yang J C. Online inspection technology study for foreign fiber based on visual sensor[J]. Cotton Textile Technology, 46, 5-8(2018).

    [44] Zhang X, Li D L, Yang W Z et al. A fast segmentation method for high-resolution color images of foreign fibers in cotton[J]. Computers and Electronics in Agriculture, 78, 71-79(2011).

    [45] Dang S X. Research and implementation on automation detection technology of foreign fiber in cotton flow based on machine vision[D](2016).

    [46] Itti L, Koch C, Niebur E. A model of saliency-based visual attention for rapid scene analysis[J]. IEEE Transactions on Pattern Analysis and Machine Intelligence, 20, 1254-1259(1998).

    [47] Yang W Z, Li D L, Wang S L et al. Saliency-based color image segmentation in foreign fiber detection[J]. Mathematical and Computer Modelling, 58, 852-858(2013).

    [48] Shi H Y, Guan S Q. Cotton foreign fibers detection based on visual attention computational model[J]. Journal of Donghua University (Natural Science), 42, 400-405(2016).

    [49] Shi H Y, Guan S Q. Cotton foreign fibers detection based on visual data driven[J]. Journal of Silk, 54, 36-42(2017).

    [50] Liu S X, Wang J X, Zhang H et al. Research on the multi-channel wavelet segmentation method of faint cotton foreign fibers[J]. Chinese Journal of Scientific Instrument, 37, 60-66(2016).

    [51] Xie T T, Gu Y L, Sha T et al. A method for detection of foreign body in cotton based on RGB space model[C]. //2011 2nd International Conference on Artificial Intelligence, Management Science and Electronic Commerce (AIMSEC), August 8-10, 2011, Dengfeng, China., 31-33(2011).

    [52] Chen Y J, Zhang E H, Mou Y Q. Online detecting method for foreign fibers based on color space model and connected area analysis algorithm[J]. Computer Engineering and Applications, 49, 162-166(2013).

    [53] Xie T T. Cotton foreign fiber detection method based on RGB spatial model[J]. Modern Industrial Economy and Informationization, 9, 67-68(2019).

    [54] Wang Q X, Li Z B, Wang J X et al. A fast processing method of foreign fiber images based on HSV color space[M]. //Li D L, Chen Y Y. Computer and computing technologies in agriculture VI. IFIP advances in information and communication technology, 392, 390-397(2013).

    [55] Zheng P. The design and implementation of automatic detection system of foreign fiber in cotton based on multi pattern classification algorithm[D](2017).

    [56] Ji R H, Li D L, Chen L R et al. Classification and identification of foreign fibers in cotton on the basis of a support vector machine[J]. Mathematical and Computer Modelling, 51, 1433-1437(2010).

    [57] Luo Y H. Research on yarn defect model and detection and recognition technology of multi-type different foreign fiber[D](2015).

    [58] Kennedy J, Eberhart R. Particle swarm optimization[C]. //Proceedings of ICNN’95-International Conference on Neural Networks, November 27-December 1, 1995, Perth, WA, Australia., 1942-1948(1995).

    [59] Li H B, Wang J X, Yang W Z et al. Feature selection for cotton foreign fiber objects based on PSO algorithm[M]. //Li D L, Chen Y Y. Computer and computing technologies in agriculture V. IFIP advances in information and communication technology, 370, 446-452(2012).

    [60] Zhao X H, Li D L, Yang B et al. A two-stage feature selection method with its application[J]. Computers & Electrical Engineering, 47, 114-125(2015).

    [61] Dorigo M, Maniezzo V, Colorni A. Ant system: optimization by a colony of cooperating agents[J]. IEEE Transactions on Systems, Man, and Cybernetics, Part B (Cybernetics), 26, 29-41(1996).

    [62] Zhao X H, Li D L, Yang W Z et al. Feature selection based on ant colony optimization for cotton foreign fiber[J]. Sensor Letters, 9, 1242-1248(2011).

    [63] Zhao X H, Li D L, Yang B et al. Feature selection based on improved ant colony optimization for online detection of foreign fiber in cotton[J]. Applied Soft Computing, 24, 585-596(2014).

    [64] Goodman E D. Introduction to genetic algorithms[C]. //Proceedings of the fourteenth international conference on Genetic and evolutionary computation conference companion-GECCO Companion’12, July 7-11, 2012, Philadelphia, Pennsylvania, USA., 671-692(2012).

    [65] Yang W Z, Li D L, Zhu L. An improved genetic algorithm for optimal feature subset selection from multi-character feature set[J]. Expert Systems with Applications, 38, 2733-2740(2011).

    [66] Yang J W, Wang S L, Chen Y Y et al. Feature subset selection based on the genetic algorithm[J]. Advanced Materials Research, 774/775/776, 1532-1537(2013).

    [67] Yang C W. Research on key techniques for detection of foreign fiber content in cotton[D](2018).

    [68] Zhang Y, Xu J C, Wang Z W et al. Optimization of cotton heterosexual detection technology based on machine vision[J]. Journal of Chinese Agricultural Mechanization, 39, 61-65(2018).

    [69] Zhao X H, Li D L, Yang B et al. An efficient and effective automatic recognition system for online recognition of foreign fibers in cotton[J]. IEEE Access, 4, 8465-8475(2016).

    [70] Zhao X H, Guo X Y, Luo J et al. Efficient detection method for foreign fibers in cotton[J]. Information Processing in Agriculture, 5, 320-328(2018).

    [71] Peng H C, Long F H, Ding C. Feature selection based on mutual information criteria of max-dependency, max-relevance, and min-redundancy[J]. IEEE Transactions on Pattern Analysis and Machine Intelligence, 27, 1226-1238(2005).

    [72] Jiang Y, Li C Y. mRMR-based feature selection for classification of cotton foreign matter using hyperspectral imaging[J]. Computers and Electronics in Agriculture, 119, 191-200(2015).

    [73] Zhang M Y, Li C Y, Yang F Z. Classification of foreign matter embedded inside cotton lint using short wave infrared (SWIR) hyperspectral transmittance imaging[J]. Computers and Electronics in Agriculture, 139, 75-90(2017).

    [74] He Y, Wang J F. Rapid nondestructive identification of wood lacquer using Raman spectroscopy based on characteristic-band-Fisher-K nearest neighbor[J]. Laser & Optoelectronics Progress, 57, 013001(2020).

    [75] Ouyang L, Peng H T, Wang D Y et al. Supervised identification algorithm on detection of foreign fibers in raw cotton[C]. //2012 24th Chinese Control and Decision Conference (CCDC), May 23-25, 2012, Taiyuan, China., 2636-2639(2012).

    [76] Liu J. Study of the content fast testing system of cotton foreign fibers[D](2015).

    [77] Wang X, Li D L, Yang W Z et al. Lint cotton pseudo-foreign fiber detection based on visible spectrum computer vision[J]. Transactions of the Chinese Society for Agricultural Machinery, 46, 7-14(2015).

    [78] Li D L, Yang W Z, Wang S L. Classification of foreign fibers in cotton lint using machine vision and multi-class support vector machine[J]. Computers and Electronics in Agriculture, 74, 274-279(2010).

    [79] Yang W Z, Lu S K, Wang S L et al. Fast recognition of foreign fibers in cotton lint using machine vision[J]. Mathematical and Computer Modelling, 54, 877-882(2011).

    [80] Cai Y Y, Wu J, Zhang C. Classification of trash types in cotton based on deep learning[C]. //2019 Chinese Control Conference (CCC), July 27-30, 2019, Guangzhou, China., 8783-8788(2019).

    [81] He X Y, Su Z W, Deng B Y et al. An artificial intelligence method for detecting foreign fiber in seed cotton[J]. Cotton Textile Technology, 46, 49-52(2018).

    [82] He X Y, Wei P, Zhang L et al. Detection method of foreign fibers in seed cotton based on deep-learning[J]. Journal of Textile Research, 39, 131-135(2018).

    [83] Zhang D. Research on seed cotton foreign fiber sorting recognition algorithm based on deep learning[D](2019).

    [84] Du Y H, Dong C Q, Zhao D et al. Application of improved Faster RCNN model for foreign fiber identification in cotton[J]. Laser & Optoelectronics Progress, 57, 121007(2020).

    [85] Dong C Q. Research on foreign fiber classification method based on improved Faster R-CNN model[D](2020).

    [86] Wu M X, Wu J, Zhang C et al. Detection of foreign fiber in cotton based on improved YOLOv3[J]. Chinese Journal of Liquid Crystals and Displays, 35, 1195-1203(2020).

    Yajun Chen, Tingrong Wu, Shuwei Shi, Bo Zhao, Shuhan Yang. Review of Cotton Foreign Fiber Detection Method Using Optical Imaging[J]. Laser & Optoelectronics Progress, 2021, 58(16): 1600007
    Download Citation