基于人工神经网络的针织物疵点分类检测

Subrata Das, A. Wahi, S. Sundaramurthy, N. Thulasiram, S. Keerthika
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引用次数: 3

摘要

针织物缺陷的分类是全球研究的一个活跃领域。提出了一种针织物疵点的分类检测方法。这项工作分两个阶段进行。第一阶段采用高分辨率相机采集两类缺陷样品的图像;将样品的彩色图像转换为灰度图像。从每个灰度图像中提取特征并存储在数据库中。第二阶段采用误差反向传播算法在训练数据集上训练神经分类器。神经网络在训练数据集上训练成功后,在测试数据集上评估训练后的神经网络的性能。通过增加训练数据样本的数量进行不同的实验,得到了最佳的评价性能为83.3%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of knitted fabric defect detection using Artificial Neural Networks
Classification of defects in knitted fabric is an active area of research around the globe. This paper presents a classification method to detect defects such as holes and thick places in knitted fabric. The work has been carried out in two phases. In the first phase the images of the defective samples of two classes were collected by a high resolution camera. The colour images of the samples were converted into grey scale images. The features were extracted from each grey scale image and stored in a database. In the second phase a neural classifier was trained with error back-propagation algorithm on the training dataset. After successful training of the neural network on train dataset, the performance of the trained neural network was evaluated on the test dataset. Different experiments were carried out by increasing the no of training data samples, it was found that the best evaluation performance was obtained as 83.3%.
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