Rail Surface Defect Segmentation Based on Background Difference and Maximum Entropy
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    Abstract:

    To improve the efficiency and accuracy of rail surface defect detection, a rail surface defect detection algorithm based on background difference and maximum entropy is proposed. Firstly, the background model of the rail images is built, and the original images are differentiated from the background images to avoid the influence of illumination change and uneven reflection and accurately highlight the defect area. Then, the improved genetic algorithm is combined with the maximum entropy method to seek the best segmentation threshold and binarize the difference graph. The operational speed of the maximum entropy method is accelerated by the improved genetic algorithm. Finally, the binary images are filtered to complete the segmentation of rail surface defects. The simulations indicate that this method can segment defects quickly and accurately, and the precision, recall, and accuracy are 88.6%, 93.4%, and 90.6%, respectively.

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王国伟,陈光武,魏宗寿.基于背景差分与最大熵的轨面缺陷分割.计算机系统应用,2022,31(10):184-190

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History
  • Received:November 09,2021
  • Revised:December 17,2021
  • Online: July 14,2022
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