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Training-Free Counter Propagation Neural Network for Pattern Recognition of Fabric Defects

机译:用于织物瑕疵图案识别的免培训反向传播神经网络

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摘要

We present an application of a Training-free counter propagation network (TFCPN) to detect fabric defects. The TFCPN, which is a modification of Hecht-Nielsen's counter propagation network (CPN), learns through a simple recording algorithm devoid of any training, while retaining the topology of the CPN model. The mathematical justification for the modification is also presented. Four kinds of fabric defects-neps, broken ends, broken picks, and oil stains-most likely to be found during weaving are considered for recognition by the network. Results show that fabric defects such as these inspected by means of image recognition in accordance with the TFCPN agree approximately with initial expectations. The CPN reported in this paper is training-free, and it can learn complicated textile design problems.
机译:我们提出了一种无需训练的计数器传播网络(TFCPN)来检测结构缺陷的应用。 TFCPN是Hecht-Nielsen的逆向传播网络(CPN)的一种改进,它通过一种简单的记录算法来学习,无需进行任何训练,同时保留了CPN模型的拓扑。还提出了修改的数学依据。网络考虑了四种织物缺陷-棉结,断头,断头和油渍-最有可能在编织过程中发现。结果表明,诸如根据TFCPN进行图像识别检查的织物缺陷与初始预期大致相符。本文报道的CPN是免培训的,它可以学习复杂的纺织品设计问题。

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