Defect detection based on extreme edge of defective region histogram

Abstract Automatic thresholding has been used by many applications in image processing and pattern recognition systems. Specific attention was given during inspection for quality control purposes in various industries like steel processing and textile manufacturing. Automatic thresholding problem has been addressed well by the commonly used Otsu method, which provides suitable results for thresholding images based on a histogram of bimodal distribution. However, the Otsu method fails when the histogram is unimodal or close to unimodal. Defects have different shapes and sizes, ranging from very small to large. The gray-level distributions of the image histogram can vary between unimodal and multimodal. Furthermore, Otsu-revised methods, like the valley-emphasis method and the background histogram mode extents, which overcome the drawbacks of the Otsu method, require preprocessing steps and fail to use the general threshold for multimodal defects. This study proposes a new automatic thresholding algorithm based on the acquisition of the defective region histogram and the selection of its extreme edge as the threshold value to segment all defective objects in the foreground from the image background. To evaluate the proposed defect-detection method, common standard images for experimentation were used. Experimental results of the proposed method show that the proposed method outperforms the current methods in terms of defect detection.

[1]  Gang Wang,et al.  Automatic identification of different types of welding defects in radiographic images , 2002 .

[2]  Bülent Sankur,et al.  Selection of thresholding methods for nondestructive testing applications , 2001, Proceedings 2001 International Conference on Image Processing (Cat. No.01CH37205).

[3]  Linda G. Shapiro,et al.  Computer Vision , 2001 .

[4]  Suneeta Agarwal,et al.  An imaging approach for the automatic thresholding of photo defects , 2015, Pattern Recognit. Lett..

[5]  T. Kurfess,et al.  Automatic thresholding for defect detection by background histogram mode extents , 2015 .

[6]  Bülent Sankur,et al.  Survey over image thresholding techniques and quantitative performance evaluation , 2004, J. Electronic Imaging.

[7]  Bo Lei,et al.  A modified valley-emphasis method for automatic thresholding , 2012, Pattern Recognit. Lett..

[8]  Nixon,et al.  Feature Extraction & Image Processing , 2008 .

[9]  Soon H. Kwon,et al.  Threshold selection based on cluster analysis , 2004, Pattern Recognit. Lett..

[10]  Xiong Fu-song,et al.  Survey over image thresholding techniques based on entropy , 2014, 2014 International Conference on Information Science, Electronics and Electrical Engineering.

[11]  Chih-Yang Lin,et al.  An improved method for image thresholding based on the valley-emphasis method , 2013, 2013 Asia-Pacific Signal and Information Processing Association Annual Summit and Conference.

[12]  Xiaolu Yang,et al.  An Improved Median-based Otsu Image Thresholding Algorithm , 2012 .

[13]  Randall R. Bresee,et al.  Fabric Defect Detection and Classification Using Image Analysis , 1995 .

[14]  Rafael C. González,et al.  Local Determination of a Moving Contrast Edge , 1985, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[15]  Hui-Fuang Ng,et al.  Automatic thresholding for defect detection , 2004, Third International Conference on Image and Graphics (ICIG'04).