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Selection of distinguishing features for fabric defect classification using neural network

机译:基于神经网络的织物疵点分类特征选择

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Over the years significant research has been performed for automated, i.e. machine vision based fabric inspection systems in order to replace manual inspection, which is time consuming and not accurate enough. Automated fabric inspection systems mainly involve two challenging problems, one of which is defect classification. The amount of research done to date to solve the defect classification problem is insufficient. Scene analysis and feature selection play a very important role in the classification process. Insufficient scene analysis results in an inappropriate set of features. Selection of an inappropriate feature set increases complexities of subsequent steps and makes the classification task harder. Considering this observation, we present a possibly appropriate feature set in order to address the problem of fabric defect classification using neural network (NN). We justify the features from the point of view of distinguishing quality and feature extraction difficulty. We perform some experiments in order to show the utility of proposed features. Promising classification accuracy has been found.
机译:多年以来,已经进行了大量的研究以用于自动化,即基于机器视觉的织物检查系统,以代替手工检查,这是费时且不够准确的。自动化的织物检查系统主要涉及两个难题,其中之一是缺陷分类。迄今为止,为解决缺陷分类问题而进行的研究数量不足。场景分析和特征选择在分类过程中起着非常重要的作用。场景分析不足会导致一组不适当的功能。选择不合适的功能集会增加后续步骤的复杂性,并使分类任务更加困难。考虑到这一观察结果,我们提出了一种可能合适的特征集,以解决使用神经网络(NN)进行织物缺陷分类的问题。我们从区分质量和特征提取难度的角度来证明特征的合理性。我们进行一些实验以展示所提出功能的实用性。已经找到有希望的分类准确性。

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