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Pixel-Level Recognition of Pavement Distresses Based on U-Net

机译:基于U-NET的路面暗杀素质级别识别

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This study develops and tests an automatic pixel-level image recognition model to reduce the amount of manual labor required to collect data for road maintenance. Firstly, images of six kinds of pavement distresses, namely, transverse cracks, longitudinal cracks, alligator cracks, block cracks, potholes, and patches, are collected from four asphalt highways in three provinces in China to build a labeled pixel-level dataset containing 10,097 images. Secondly, the U-net model, one of the most advanced deep neural networks for image segmentation, is combined with the ResNet neural network as the basic classification network to recognize distressed areas in the images. Data augmentation, batch normalization, momentum, transfer learning, and discriminative learning rates are used to train the model. Thirdly, the trained models are validated on the test dataset, and the results of experiments show the following: if the types of pavement distresses are not distinguished, the pixel accuracy (PA) values of the recognition models using ResNet-34 and ResNet-50 as basic classification networks are 97.336% and 95.772%, respectively, on the validation set. When the types of distresses are distinguished, the PA values of models using the two classification networks are 66.103% and 44.953%, respectively. For the model using ResNet-34, the category pixel accuracy (CPA) and intersection over union (IoU) of the identification of areas with no distress are 99.276% and 99.059%, respectively. For areas featuring distresses in the images, the CPA and IoU of the model are the highest for the identification of patches, at 82.774% and 73.778%, and are the lowest for alligator cracks, at 14.077% and 12.581%, respectively.
机译:本研究中开发和测试的自动像素级图像识别模型,以减少手工劳动的需要为道路维修收集数据的量。首先,六种路面急难,即,横向裂纹,纵向裂纹,鳄鱼破解,块破解,坑洼,和补丁的图像,从四个沥青公路收集在中国三个省建立包含10097标记的像素级数据集图片。其次,在U-网模型,图像分割了最先进的深层神经网络之一,与作为基本分类网络来识别图像中的贫困地区的RESNET神经网络相结合。数据增强,批标准化,动量,传递学习和判别学习率来训练模型。第三,经训练的模型进行了验证的测试数据集,和实验的结果表明了以下情况:如果路面困苦的类型没有区分,像素精度(PA)的识别模型的值使用RESNET-34和RESNET-50作为基本的分类网络是分别97.336%和95.772%,所述验证集。当困苦的类型来区分,使用两个分类网络模型PA值分别为66.103%和44.953%。对于使用RESNET-34的模型中,没有窘迫区域的识别的类别像素精度(CPA)和交叉点以上联合(IOU)分别为99.276%和99.059%。对于特色的图片,模型的CPA和IOU困苦的地区是最高的补丁的识别,为82.774%和73.778%,并且是最低的为鳄鱼皮裂缝,以14.077%和12.581%,分别。

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