[1] 景军锋,张星星.基于方差投影与相关系数的色织物密度检测[J].毛纺科技,2018,46(11):89-93. JING Junfeng, ZHANG Xingxing.Yarn-dyed fabric density detection based on variance projection and correlation coefficient[J]. Wool Textile Journal, 2018,46(11):89-93. [2] ALDEMIR E, OZDEMIR H, SARI Z. An improved gray line profile method to inspect the warp-weft density of fabrics[J]. The Journal of the Textile Institute, 2019, 110(1): 105-116. [3] WU J, ZHONG P, LING J, et al. Designmethod of fabric density sensor based on the virtual grating with gradual constant[J]. IEEE Access, 2019, 99(7): 160345-160362. [4] WEN X, SUN H, WANG M. Study on high precision fabric density measuring instrument and measuring method based on moire fringe[J]. Journal of Physics: Conference Series, 2021, 1952(2): 37-45. [5] LI L Q, SHAN T T, XUE L, et al. Study on woven fabric texture based on fourier transform and gabor transform[J]. Key Engineering Materials, 2016, 671: 369-377. [6] ZHANG J, PAN R, GAO W D. Automatic inspection of density in yarn-dyed fabrics by utilizing fabric light transmittance andfourier analysis[J]. Applied Optics, 2015, 54(4): 966-972. [7] RUI Z, XIN B. Automatic measurement method of yarn dyed woven fabric density via wavelet transform fusion technique[J]. Journal of Fiber Bioengineering and Informatics, 2016, 9(2): 115-132. [8] 陆海亮,向忠,胡旭东,等.基于小波变换的机织物高密度检测[J].轻工机械,2017,35(1):59-63. LU Hailiang, XIANG Zhong, HU Xudong, et al. High-density detection of woven fabric based on wavelet transform[J]. Light Industry Machinery, 2017, 35(1): 59-63. [9] MENG S, PAN R, GAO W, et al. Woven fabric density measurement by using multi-scale convolutional neural networks[J]. IEEE Access, 2019, 99(7): 75810-75821. [10] 陈凯峰,向忠.基于多方向光源的色纱织物密度图像检测[J].轻工机械,2019,37(5):62-67. CHEN Kaifeng, XIANG Zhong, SHI Weimin. Density image detection of yarn-dyed woven fabric based on multi-directional light source[J]. Light Industry Machinery, 2019, 37(5): 62-67. [11] LI K,WEI Y,YANG Z,et al.Image inpainting algorithm based on TV model and evolutionary algori-thm[J].Soft Computing-A Fusion of Foundations, Methodologies and Applications, 2016, 20(3): 885-893. [12] TANG L M, TAN Y T, FANG Z, et al. An improved criminisi image inpainting algorithm based on structure component and information entropy[J]. Journal of Optoe-lectronics Laser, 2017, 28(1): 108-116. [13] QIN Z, ZENG Q, ZONG Y, et al. Image inpainting based on deep learning: A review[J]. Displays, 2021, 69(2): 102028-102035. [14] CRIMINISI A, PEREZ P, TOYAMA K.Region filling and object removal by exemplar-based image inpainting[J]. IEEE Transactions on Image Processing, 2004, 13(9): 1200-1212. [15] YAO F. Damaged region filling by improved criminisi image inpainting algorithm for thangka[J]. Cluster Computing, 2019, 22(6): 13683-13691. [16] SINGH N, BHANDARI A K,KUMAR I V. Fusion-based contextually selected 3D Otsu thresholding for image segmentation[J]. Multimedia Tools and Applications, 2021, 80(6): 1-22. [17] MAHMOU A. Single image super-resolution algorithm using PSNR in the wavelet domain[J]. Journal of Advanced Research in Dynamical and Control Systems, 2020, 12(1): 677-691. [18] WANG X, LI X, TANG C, et al. Median filtering detection using LBP encoding pattern[J]. Multimedia Tools and Applications, 2021, 80: 17721-17744. [19] LI Y, ZHANG Y, GENGA, et al. Infrared image enhancement based on atmospheric scattering model and histogram equalization[J]. Optics & Laser Technology, 2016, 83: 99-107. [20] XU Z,SUN J. Image inpainting by patch propagation using patch sparsity[J]. IEEE Transactions on Image Processing, 2010, 19(5): 1153-1165. [21] CHEN C, CHU X. Two-dimensional Morlet wavelet transform and its application to wave recognition metho-dology of automatically extracting two-dimensional wave packets from lidar observations in Antarctica[J]. Journal of Atmospheric and Solar Terrestrial Physics, 2017, 162: 28-47. |