An Improved Defect Detection Algorithm of Jean Fabric Based on Optimized Gabor Filter

Shuangbao Ma, Wen Liu, Changli You, Shulin Jia, Yurong Wu
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引用次数: 3

Abstract

Aiming at the defect detection quality of denim fabric, this paper designs an improved algorithm based on the optimized Gabor filter. Firstly, we propose an improved defect detection algorithm of jean fabric based on the maximum two-dimensional image entropy and the loss evaluation function. Secondly, 24 Gabor filter banks with 4 scales and 6 directions are created and the optimal filter is selected from the filter banks by the one-dimensional image entropy algorithm and the two-dimensional image entropy algorithm respectively. Thirdly, these two optimized Gabor filters are compared to realize the common defect detection of denim fabric, such as normal texture, miss of weft, hole and oil stain. The results show that the improved algorithm has better detection effect on common defects of denim fabrics and the average detection rate is more than 91.25%.
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一种改进的基于优化Gabor滤波器的牛仔织物缺陷检测算法
针对牛仔织物疵点检测质量问题,设计了一种基于优化Gabor滤波器的改进算法。首先,提出了一种基于最大二维图像熵和损失评价函数的改进牛仔织物缺陷检测算法。其次,创建4个尺度、6个方向的24个Gabor滤波器组,分别采用一维图像熵算法和二维图像熵算法从滤波器组中选择最优滤波器;第三,将这两种优化后的Gabor滤波器进行对比,实现对牛仔织物正常纹理、缺纬、破洞、油污等常见疵点的检测。结果表明,改进算法对牛仔织物常见缺陷的检测效果较好,平均检出率大于91.25%。
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