基于深度学习的阈值分割桥式裂纹检测算法

Liyong Guo
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引用次数: 0

摘要

提出了一种基于深度学习和Zernike正交矩的裂缝分割和宽度测量方法。针对传统方法适用性差的缺点,将深度学习算法与基于数字图像处理的传统算法相结合。基于深度学习的定性分类能力,将图像中的裂缝检测分为“存在判断”、“自动绘制”和“宽度测量”三个层次。采用深度学习的多尺度缩小裂缝范围,在传统裂缝初步分割方法的基础上,再次利用深度学习对初步分割的裂缝进行筛选,大大提高了复杂环境下裂缝分割的准确性和抗噪声性。宽度测量方面,针对传统“少像素”方法对5像素内小裂缝测量误差大的缺点,提出了基于Zernike正交矩的5像素内小裂缝宽度测量方法。该方法直接利用裂纹的灰度信息来计算裂纹宽度,提高了图像中小裂纹宽度测量的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Threshold Segmentation Bridge Crack Detection Algorithm Based on Deep Learning
A crack segmentation and width measurement method based on deep learning and Zernike orthogonal moments was proposed. In response to the shortcomings of poor applicability of traditional methods, deep learning algorithms are combined with traditional algorithms based on digital image processing. Based on the qualitative classification ability of deep learning, the detection of cracks in images is divided into three levels: "judgment of presence", "automatic sketching", and "width measurement". Adopting multiple scales of deep learning to narrow the scope of cracks, and on the basis of traditional methods for preliminary segmentation of cracks, deep learning is used again to screen the preliminary segmented cracks, greatly improving the accuracy of crack segmentation and noise resistance in complex environments. In terms of width measurement, a method based on Zernike orthogonal moments for measuring the width of small cracks within 5 pixels is proposed to address the shortcomings of traditional "few pixels" methods, which have large measurement errors for small cracks within 5 pixels. The method directly uses the grayscale information of cracks to calculate the width of cracks and improves the accuracy of width measurement for small cracks in images.
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