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采用U-Net卷积网络的桥梁裂缝检测方法 被引量:49

Method for bridge crack detection based on the U-Net convolutional networks
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摘要 针对传统的桥梁裂缝检测准确性不高、丢失细节信息、宽度信息获取困难等问题,提出一种采用U-Net卷积网络的像素级、小样本的裂缝检测方法。该方法使用多层卷积自动提取裂缝特征,并利用浅层网络与深层网络叠加的方法实现裂缝局部特征与抽象特征的融合,从而保留裂缝细节特征,使得检测准确性大大提升。对检测结果中出现的背景杂波和伪裂缝,采用阈值法和改进的迪杰斯特拉连接算法来实现裂缝的精细提取。最后,采用八方向搜索法实现裂缝宽度的精确测量。实验证明,所提方法能准确、完整地对桥梁裂缝进行提取,宽度测量准确,可以满足应用需求。 In order to improve the accuracy of bridge crack detection,retain details,and get information on the crack width,the paper proposes a pixel-wise and small sample crack detection method by using U-Net convolutional neural networks.The method uses a U-Net network to extract crack features automatically by using multi-layer convolutions,and uses the superposition of the shallow network and deep network to realize the fusion of local features and abstract features of cracks.This method can retain the details of cracks and greatly improve the accuracy of detection.In order to refine the detection results,the paper presents the threshold method and an improved Dijkstra minimum spanning tree algorithm for eliminating noise and pseudo cracks.Finally,an eight-direction searching method is applied to measure the width of cracks in pixels.Experiments prove that the proposed method can accurately and completely detect bridge cracks and measure the width,which can meet the application requirements.
作者 朱苏雅 杜建超 李云松 汪小鹏 ZHU Suya;DU Jianchao;LI Yunsong;WANG Xiaopeng(State Key Lab. of Integrated Service Networks,Xidian Univ.,Xi’an 710071,China;Xi’an Highway Research Institute,Xi’an 710065,China)
出处 《西安电子科技大学学报》 EI CAS CSCD 北大核心 2019年第4期35-42,共8页 Journal of Xidian University
基金 国家自然科学基金(61372069)
关键词 图像处理 桥梁裂缝检测 卷积神经网络 U-Net网络 image processing bridge cracks detection convolutional neural networks U-Net network
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  • 1Huang Y,Xu B.Automatic Inspection of Pavement Cracking Distress[J].Journal of Electronic Imaging,2006,15(1).
  • 2交通部公路科学研究院上海市公路管理处.JTG H20-2007公路技术状况评定标准[M].北京:人民交通出版社,2008.
  • 3Nejad F M,Zakeri H.An Optimum Feature Extraction Method Based on Wavelet-radon Transform and Dynamic Neural Network for Pavement Distress Classification[J].Expert Systems with Applications,2011,38(8):9442-9460.
  • 4Huang Y,Xu B.Automatic Inspection of Pavement Cracking Distress[J].Journal of Electronic Imaging,2006,15(1).
  • 5Oh H,Garrick N W,Achenie L E K.Segmentation Algorithm Using Iterative Clipping for Processing Noisy Pavement Images[C]//Proceedings of the2nd International Conference on Imaging Technologies:Techniques and Applications in Civil Engineering.[S.1.]:IEEE Press.1998:259-267.
  • 6Cheng H D,Miyojim M.Automatic Pavement Distress Detection System[J].Information Sciences,1998,108(1):219-240.
  • 7AndalóF A,Miranda P A V,Torres R S,et al.Shape Feature Extraction and Description Based on Tensor Scale[J].Pattern Recognition,2010,43(1):26-36.
  • 8Tsai Y C,Kaul V,Mersereau R M.Critical Assessment of Pavement Distress Segmentation Methods[J].Journal of Transportation Engineering,2009,136(1):11-19.
  • 9徐志刚,赵祥模,宋焕生,雷涛,韦娜.基于直方图估计和形状分析的沥青路面裂缝识别算法[J].仪器仪表学报,2010,31(10):2260-2266. 被引量:62
  • 10邹勤,李清泉,毛庆洲,陈龙.利用目标点最小生成树的路面裂缝检测[J].武汉大学学报(信息科学版),2011,36(1):71-75. 被引量:20

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