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Neural Network Technique for Fiber Image Recognition

机译:神经网络技术在光纤图像识别中的应用

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摘要

A neural network method of analyzing cross-sectional images of a wool/silk blended yarn is studied. The research has two major components: the process of original yarn cross-sectional images including image enhancement and shape filtering; and the determination of characteristic parameters for distinguishing wool and silk fibers in the enhanced yarn cross-sectional images. A neural network computing approach, single-layer perceptrons, is used for learning the target parameters. The established neural network model features a good capability of tolerance and learning, in contrast to traditional methods of image pattern recognition. The study indicates that preparation of the yarn sample slices is critically important to obtain undistorted fiber images and to ensure the accuracy of fiber recognition by the neural network model. The research concludes that the overall error estimate for recognizing wool or silk fiber is 5%.
机译:研究了一种神经网络方法,用于分析羊毛/丝绸混纺纱的横截面图像。该研究包括两个主要部分:原始纱线横截面图像的过程,包括图像增强和形状过滤;确定增强的纱线横截面图像中用于区分羊毛和蚕丝纤维的特征参数。使用神经网络计算方法(单层感知器)来学习目标参数。与传统的图像模式识别方法相比,已建立的神经网络模型具有良好的容忍能力和学习能力。研究表明,准备纱线样品切片对于获得不失真的纤维图像并确保神经网络模型确保纤维识别的准确性至关重要。研究得出结论,识别羊毛或丝纤维的总误差估计为5%。

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