A Hybrid Scheme for Online Detection and Classification of Textural Fabric Defects

Mina Behravan, R. Boostani, F. Tajeripour, Z. Azimifar
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引用次数: 6

Abstract

Online automatic fabric defect detection and classification of the localized defect types are two vital stages in production line of textile manufactures. Here a hybrid approach is proposed for online detection of defects through serial fabric images and then classifying the localized defect types. First, defects are detected and localized by using a modified local binary pattern (LBP) operator and second, to characterize the defective regions, textons are utilized. Different classes of fabric defects locally cause different types of texture and therefore the classification of defects can be formulated as a texture classification problem. In the state-of-the-art texture analysis approaches a texture is characterized through textons describing local properties of textures. For the first time, in this paper the approach is used for classification of fabric defects. The employed dataset in this study is provided by fabric laboratory of University of Hong Kong. Images in the dot-patterned fabric database contain six types of well-known defects. Experimental results have yielded excellent results such that classification accuracy of detected defect types is determined 100%. The low computational complexity and high robustness of the proposed scheme confirm the usefulness of this approach for online fabric inspection.
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织物疵点在线检测与分类的混合方案
织物疵点在线自动检测和疵点局部分类是纺织企业生产线上的两个重要环节。本文提出了一种通过织物序列图像在线检测缺陷并对局部缺陷类型进行分类的混合方法。首先,利用改进的局部二值模式(LBP)算子对缺陷进行检测和定位;其次,利用文本对缺陷区域进行表征。不同类别的织物缺陷局部导致不同类型的纹理,因此缺陷的分类可以表述为纹理分类问题。在最先进的纹理分析方法中,通过描述纹理局部属性的纹理来表征纹理。本文首次将该方法用于织物疵点的分类。本研究使用的数据集由香港大学织物实验室提供。点图案织物数据库中的图像包含六种众所周知的缺陷。实验结果取得了很好的结果,检测到的缺陷类型分类准确率达到100%。该方法具有较低的计算复杂度和较高的鲁棒性,可用于织物在线检测。
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