K-means clustering with morphological filtering for silicon wafer grain defect detection

2020 
Grain surface defects have become an important factor affecting chip quality. How to correctly detect grain surface defects is a complicated and challenging task. Defect detection technology has become a key technology in the chip industry. K-means clustering algorithm is used for image segmentation. However, the traditional K-means clustering algorithm is sensitive to noise. In order to improve the robustness of K-means clustering algorithm to image segmentation, local spatial information is often introduced into the algorithm. This paper proposes an improved k-means clustering algorithm based on morphological filtering. By introducing morphological close operation and open operation into the k-means clustering algorithm, image noise immunity and detail preservation are guaranteed. Experiments show that the improved algorithm has good segmentation effect and is more robust to noise than the traditional k-means clustering algorithm. The improved algorithm can effectively detect grain surface defects with accuracy of 99.02%.
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