A Method for Segmentation of Surface Defects in Non-flat Area Based on Deep Learning

Jinwei Mao, Wang Luo, Weidong Yang, Lei Zhang
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Abstract

Surface defect detection based on computer vision has become a valuable and promising research field, which has a very high direct impact on the application field of visual inspection, especially industrial production. With the development of computer vision technology, deep-learning has become the most suitable method to solve the problem. By using the sample image as a reference, deep learning enables the inspection system to learn to detect surface defects. However, in the actual industrial environment, fewer defective samples cause difficulties in data collection. This paper proposes a segmentation method, which is specially designed for the segmentation of surface defects in non-flat areas, and demonstrates the detection effect of this method. The method only uses a small number of defective samples for training, which is a very significant advantage for industrial applications. The paper compares the proposed method with related deep-learning detection methods, and the result shows that this method is superior to other methods in detecting surface defects in specific areas on the surface of non-flat areas. We created a new dataset for experimentation based on real cases. The results of experiments show off that the proposed approach apply small number of defected surfaces to fit network parameters, using only approximately 40-50 training samples for each type of defects, and the detection effect is not inferior to the related methods. Because of this few-shot characteristics, the proposed approach has high industrial application value.
基于深度学习的非平坦区域表面缺陷分割方法
基于计算机视觉的表面缺陷检测已经成为一个非常有价值和前景的研究领域,对视觉检测的应用领域,特别是工业生产有着非常直接的影响。随着计算机视觉技术的发展,深度学习已经成为解决这一问题最合适的方法。通过使用样本图像作为参考,深度学习使检测系统能够学习检测表面缺陷。然而,在实际工业环境中,由于缺陷样本较少,导致数据收集困难。本文提出了一种专门针对非平坦区域表面缺陷的分割方法,并对该方法的检测效果进行了验证。该方法只使用少量的缺陷样本进行训练,对于工业应用具有非常显著的优势。本文将所提出的方法与相关的深度学习检测方法进行了比较,结果表明,该方法在检测非平坦区域表面特定区域的表面缺陷方面优于其他方法。我们根据真实案例创建了一个新的实验数据集。实验结果表明,该方法采用少量的缺陷面来拟合网络参数,每种缺陷仅使用约40-50个训练样本,检测效果不低于相关方法。由于这种少弹特性,该方法具有很高的工业应用价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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