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Deep Learning for Detection of Pavement Distress using Nonideal Photographic Images

机译:使用非理想摄影图像检测路面不良的深度学习

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In this paper, a deep learning approach for detecting pavement distress from nonideal photographic images of the road is investigated. Due to inconsistent data quality, part of the associated machine learning challenge is to produce training and validation data that bears coherent information sufficient for the task of successfully training a deep convolutional neural network that provides required detection performance. In the paper, the proposed method for detecting pavement distress is described. Work-in-progress experimental results are reported and analyzed.
机译:本文研究了一种深度学习方法,用于从道路的非理想摄影图像中检测路面的窘迫。由于数据质量不一致,因此相关的机器学习挑战的一部分是产生训练和验证数据,这些数据具有足以成功训练提供所需检测性能的深度卷积神经网络的任务的一致性信息。在本文中,描述了所提出的用于检测路面损伤的方法。报告并分析了进行中的实验结果。

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