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Research on Bridge Crack Detection with Neural Network Based Image Processing Methods

机译:基于神经网络的图像处理方法在桥梁裂缝检测中的研究

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In bridge health monitoring, the detection and localization of surface defects are highly important for health condition evaluation. Due to the limitation of manual detection, it is easier to measure those defects in a more automatic way. Machine learning is a hot topic in the recent decade, and the contribution of Artificial Neural Network (ANN) is especially remarkable, which is the most widely used models of machine learning in the image-processing field. In this paper, we will discuss two ANN-based algorithms (Back propagation (BP) and Self-Organizing Maps (SOM)) and their applications for the recognition of surface defect on images taken from bridges. Moreover, a combined network algorithm with BP and SOM is designed in order to improve the performance in crack image segmentation, and analysis over this network is carried out specifically.
机译:在桥梁健康监测中,表面缺陷的检测和定位对于健康状况评估非常重要。由于手动检测的局限性,更容易以自动方式测量那些缺陷。机器学习是近十年来的热门话题,而人工神经网络(ANN)的贡献尤为突出,它是图像处理领域使用最广泛的机器学习模型。在本文中,我们将讨论两种基于ANN的算法(反向传播(BP)和自组织图(SOM))及其在识别桥梁图像上的表面缺陷上的应用。为了提高裂纹图像分割的性能,设计了一种结合BP和SOM的网络算法,并对该网络进行了具体的分析。

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