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Intelligence control of on-line dynamic gray cloth inspecting machine system module design. II. Defects inspecting module design

机译:在线动态坯布检测机系统模块的智能控制。二。缺陷检查模块设计

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摘要

This study aimed to establish a set of gray cloth defect inspection module using image processing technique, so as to develop a full intelligent online dynamic gray cloth defect automatic inspection system. Gray cloth defects to be recognized in this study included holes, stains, warp missing, spider web and weft missing. First use wavelet transform and co-occurrence matrix to find features of gray cloth defect image, next, use back-propagation neural network (BPNN) to make gray cloth defect classification and data output. BPNN was capable of solving nonlinear problems, thus assisted in enhancing defect recognition effect. As every defect to be inspected in this study varied in size and shape, so advantage of BPNN could be used as aid more than else. This study primarily utilized image processing technique to inspect gray cloth defects, not only in a faster speed than common visual inspection, but also eliminating arbitrary factors of inspectors in body and psychology during inspection, resulting in absolute objectivity. Finally, tension control module built in Part 1 and gray cloth defect inspection module built in this study were integrated, and a full intelligent online dynamic gray cloth defect automatic inspection system established. As validated by experiment result, the system established in this study could successfully recognize gray cloth defects, with total recognition rate amounting to 92.5 %.
机译:本研究旨在建立一套利用图像处理技术的坯布缺陷检测模块,以开发一套完整的智能在线动态坯布缺陷自动检测系统。在这项研究中要识别的坯布缺陷包括孔洞,污渍,经线缺失,蜘蛛网和纬线缺失。首先使用小波变换和共现矩阵找到坯布缺陷图像的特征,其次,使用反向传播神经网络(BPNN)进行坯布缺陷分类和数据输出。 BPNN能够解决非线性问题,从而有助于增强缺陷识别效果。由于本研究中要检查的每个缺陷的大小和形状都不同,因此可以将BPNN的优势作为辅助手段。这项研究主要利用图像处理技术检查坯布缺陷,不仅速度比普通肉眼检查更快,而且消除了检查人员在检查过程中身体和心理上的任意因素,从而实现了绝对的客观性。最后,将第1部分中构建的张力控制模块和本研究中构建的坯布缺陷检测模块集成在一起,并建立了一个完整的智能在线动态坯布缺陷自动检测系统。实验结果表明,该系统能够成功识别坯布缺陷,总识别率为92.5%。

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