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An On-Line Fabric Classification Technique Using a Wavelet-Based Neural Network Approach

机译:基于小波神经网络的织物在线分类技术

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A sewing system is described that classifies both the fabric type and number of plies encountered during apparel assembly, so that on-line adaptation of the sewing parameters to improve stitch formation and seam quality can occur. Needle penetration forces and presser foot forces are captured and decomposed using the wavelet transform. Salient features extracted using the wavelet transform of the needle penetration forces form the input to an artificial neural network, which classifies the fabric type and number of plies being sewn. A functionally linked wavelet neural network is trained on a moderate number of stitches for five fabrics, and can correctly classify both fabric type and number of plies being sewn with 97.6% accuracy. This network is intended for use with dedicated DSP hardware to classify fabrics on-line and control sewing parameters in real time.
机译:描述了一种缝制系统,该系统将织物类型和在服装组装期间遇到的帘布层的数量分类,从而可以进行缝制参数的在线调整以改善线圈的形成和接缝质量。使用小波变换捕获并分解针刺入力和压脚力。使用针刺力的小波变换提取的显着特征形成了人工神经网络的输入,该人工神经网络对织物类型和缝制的层数进行了分类。一个功能链接的小波神经网络在中等数量的五种织物的针迹上进行训练,并且可以正确地对织物类型和所缝制的层数进行分类,准确率为97.6%。该网络旨在与专用DSP硬件一起使用,以对织物进行在线分类并实时控制缝纫参数。

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