Fabric Weave Pattern Recognition and Classification by Machine Learning

Muhammad Arslan Rauf, Muhammad Jehanzeb, Ubaid Ullah, Usman Ali, Muhammad Kashif, Muhammad Abdullah
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引用次数: 1

Abstract

The fabric pattern recognition and subsequently the classification is an imperative task in textiles. Currently, this is done manually, therefore, the need of the requirement is to develop a system that could recognize and classify the fabric weave patterns for ease of inspection and storage. The classification of woven fabrics in today's textile industry is generally manual, requiring significant human effort and a long time. Automatic and effective approaches for woven fabric classification are desperately required with the rapid development of computer vision. This paper proposes an automated and real-time classification technique to analyze three woven fabrics: plain, twill, and satin weave. To achieve the objective, ResNet pre-trained Convolutional Neural Network architecture is used for classification. To obtain texture characteristics, the gray-level co-occurrence matrix and Gabor wavelet, are included in the technique. To eliminate redundancy and maximize main component feature vectors, Principal component analysis is then used to select feature vectors. The experimental result shows that with quicker training speed, the Deep CNN classifier can reliably and efficiently identify woven fabrics. Deep Convolutional Neural Network provides the best accuracy 96.15%.
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基于机器学习的织物编织模式识别与分类
织物的模式识别和分类是纺织领域的一项重要任务。目前,这是手工完成的,因此,需求的需要是开发一个系统,可以识别和分类织物的编织模式,以方便检查和存储。当今纺织工业中机织物的分类一般是手工的,需要大量的人力和较长的时间。随着计算机视觉技术的飞速发展,迫切需要一种自动有效的机织物分类方法。本文提出了一种自动实时分类技术来分析三种机织物:平纹、斜纹和缎纹。为了实现这一目标,使用ResNet预训练的卷积神经网络架构进行分类。该方法采用灰度共生矩阵和Gabor小波来获取纹理特征。为了消除冗余并最大化主成分特征向量,采用主成分分析方法选择特征向量。实验结果表明,在训练速度较快的情况下,Deep CNN分类器能够可靠、高效地识别机织物。深度卷积神经网络的准确率为96.15%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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