Bridge Crack Detection Based on Image Segmentation

Suqin Wu, Aimin Xiong, Xusong Luo, Jing-Yu Lai
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Abstract

The detection of bridge cracks is related to the life of the bridge. Manual detection is time-consuming and laborious. Contact sensors exposed to air are susceptible to weather damage. In practice, the bridge cracks with low contrast and blurred edge features is the difficulty of crack detection based on image segmentation. To this end, this paper proposes a deep learning based image segmentation detection network. In order to reduce the size of the network model, we modify the backbone network of Segnet. The feature extraction network is modified to the structure of mobilenet and improved. Cracks belong to small targets and easily missed in the detection process. In order to improve the detection accuracy of small targets, a multi-scale feature fusion operation is adopted in this paper. The network training uses public datasets. In some images, the contrast between the crack and the background is low, so this paper binarization is used to strengthen the crack structure. The experimental results verify the effectiveness of image segmentation.
基于图像分割的桥梁裂纹检测
桥梁裂缝的检测关系到桥梁的使用寿命。人工检测费时费力。接触空气的接触式传感器容易受到天气损坏。在实际应用中,对比度低、边缘特征模糊的桥梁裂缝是基于图像分割的裂缝检测的难点。为此,本文提出了一种基于深度学习的图像分割检测网络。为了减小网络模型的规模,我们对段网骨干网进行了修改。将特征提取网络修改为mobilenet的结构,并对其进行改进。裂缝属于小目标,在检测过程中容易被遗漏。为了提高小目标的检测精度,本文采用了多尺度特征融合操作。网络训练使用公共数据集。在某些图像中,裂纹与背景的对比度较低,因此本文采用二值化方法对裂纹结构进行强化。实验结果验证了图像分割的有效性。
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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