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Image Inspection of Nonwoven Defects Using Wavelet Transforms and Neural Networks

机译:小波变换和神经网络的无纺布缺陷图像检测

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摘要

Image inspection of nine kinds of nonwoven defects by the wavelet transform and neural network is presented. The defects include black yarn, hole, needle streak, oil stain, stripe, corrugation, white spot, folding mark, and wrinkle mark. The wavelet transform decomposes an original image into four subimages in different frequency bands. Four texture measures, the energy, contrast and correlation with gray-level co-occurrence matrices as well as the energy with wavelet coefficients, are selected as defect features and computed based on the low-frequency subimage at resolution level one. The feature values are distributed in groups by the categories of defects throughout the feature space, accounting for suitability of the four features for inspecting nonwoven defects. The subimage is a downsized approximation of the original image; thus, in this manner, feature extraction can not only consume less computation time but also maintain the classification accuracy. The neural network acts as a classifier, which is trained by forty-five samples. The experimental results demonstrate that among forty-five testing samples, the classification accuracy is 100 %.
机译:提出了基于小波变换和神经网络的九种非织造布缺陷图像检测方法。缺陷包括黑纱,孔,针条纹,油渍,条纹,波纹,白点,折叠痕迹和皱痕。小波变换将原始图像分解为不同频带中的四个子图像。选择四个纹理量度,即与灰度共生矩阵的能量,对比度和相关性以及与小波系数的能量,作为缺陷特征,并基于分辨率为一的低频子图像进行计算。特征值在整个特征空间中按缺陷类别按组分布,这说明了检查非织造缺陷的四个特征的适用性。子图像是原始图像的缩小尺寸;因此,以这种方式,特征提取不仅可以消耗较少的计算时间,而且可以保持分类精度。神经网络充当分类器,由45个样本训练。实验结果表明,在45个测试样本中,分类精度为100%。

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