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An efficient for texture defect detection: sub-band domain co-occurrence matrices

机译:一种有效的纹理缺陷检测:子带域共现矩阵

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摘要

In this paper, an efficient algorithm, which combines concepts from wavelet theory and co-occurrence matrices, is presented for detection of defects encountered in textile images. Detection of defects within the inspected texture is performed first by decomposing the gray level images into sub-bands, then by partitioning the textured image into non-overlapping sub-windows and extracting the co-occurrence features and finally by classifying each sub-window as defective or non-defective with a Mahalanobis distance classifier being trained on defect free samples a priori. The experimental results demonstrating the use of this algorithm for the visual inspection of textile products obtained from the real factory environment are also presented. Experiments show that focusing on a particular band with high discriminatory power improves the detection performances as well as increases the computational efficiency.
机译:本文提出了一种有效的算法,该算法结合了小波理论和共现矩阵的概念,用于检测纺织品图像中遇到的缺陷。首先通过将灰度图像分解为子带,然后将纹理图像划分为不重叠的子窗口并提取共现特征,最后将每个子窗口分类为使用Mahalanobis距离分类器对无缺陷样本进行先验训练,确定是否有缺陷或无缺陷。还给出了实验结果,证明了该算法用于从真实工厂环境中获得的纺织品的外观检查。实验表明,将重点放在具有高区分能力的特定频段上可以提高检测性能,并提高计算效率。

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