基于深度神经网络的单级路面裂纹检测

Thomas Arthur Carr, M. Jenkins, Maria Insa Iglesias, T. Buggy, G. Morison
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引用次数: 17

摘要

公共和私人基础设施的状况和恶化是一个直接影响到世界大多数人口的问题。本文提出了残差神经网络在路面裂缝自动检测中的应用。表面纹理的大量变化和光照水平的变化使得自动检测公共和私人基础设施中的缺陷成为一项艰巨的任务。开发的系统利用了一个具有底层前馈ResNet架构的特征金字塔核心。然后,特征金字塔的输出馈送到两个子网络。一个子网将类与特征金字塔的输出关联起来。另一个子网络在训练过程中将特征金字塔的每个输出边界框的偏移量回归到相应的地面真值框。该网络是根据已经建立的数据集中的真实数据进行训练的。由于在公共领域缺乏可用的道路裂缝数据集,用于训练和测试的数据非常有限。在数据量有限的情况下,该方法以最小的误差获得了非常积极的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Road crack detection using a single stage detector based deep neural network
Condition and deterioration of public and private infrastructure is an issue that directly affects the majority of the world population. In this paper we propose the application of a Residual Neural Network to automatically detect road and pavement surface cracks. The high amount of variance in the texture of the surface and variation in illumination levels makes the task of automatically detecting defects within public and private infrastructure a difficult task. The system developed utilises a feature pyramid core with an underlying feed-forward ResNet architecture. The output from the feature pyramid then feeds into two sub-networks. One sub-network associates a class with the output from the feature pyramid. The other sub-network regresses the offset from each of the output bounding boxes of the feature pyramid to the corresponding ground truth boxes during training. The network was trained on real world data from an already established dataset. The data used to train and test on is very limited, due to the lack of available road crack datasets in the public domain. Despite the limited amount of data, the proposed method achieves a very positive results with minimal error.
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