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ResNet neural network hyperparameter tuning for Rigid Pavement Failure Assessment

机译:Reset Neural Network HyperParameter调整刚性路面故障评估

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Rigid pavement roads do not have adequate maintenance, since the inspection stage is carried out “manually”, which is not reliable or efficient, as well as requiring a greater amount of labor, time, and high cost. To solve the problem, it is proposed to evaluate the rigid pavement condition using ResNet neural networks with images obtained through a conventional 2D camera. The objective of the work was to recognize three types of failures in the rigid pavement: joint peeling, corner peeling, and corner crack. For the preprocessing phase I use image normalization and resizing, the number of images was increased through geometric transformations by 12.21%. A convolutional neural network of ResNet-18 type architecture was used. As a learning transfer technique, model tuning was used, since we not only changed the output network, but also the hyperparameters of the convolutional layers. The contribution of the present work was the refinement of the hyperparameters for the modification of the ResNet-18 neural network taking into account the iteration in the learning rate that goes from 1e-4 to 1e-2. The results were: accuracy 88.73%, sensitivity 81.63%, a specificity of 92.47%, the precision of 85.10%, and finally an F1 score of 83.33%. Three of the model’s evaluation indices have values higher than 0.71 while the fourth has a value of 0.55, which indicates that there will be a good performance with the proposed model. This work can be improved by increasing the number of images or by making a hybrid model.
机译:刚性路面道路没有足够的维护,因为检验阶段是“手动”进行的,这是不可靠或有效的,以及需要更大的劳动力,时间和高成本。为了解决问题,建议使用具有通过传统2D相机获得的图像的Reset神经网络来评估刚性路面状况。该工作的目的是识别刚性路面中的三种类型的故障:联合剥离,角落剥离和角裂缝。对于预处理阶段,我使用图像归一化和调整大小,通过几何变换将图像数量增加12.21%。使用Reset-18型架构的卷积神经网络。作为一种学习转移技术,使用模型调整,因为我们不仅改变了输出网络,还可以改变卷积层的超参数。本工作的贡献是对Reset-18神经网络进行修改的普遍参数的改进,以考虑到从1E-4到1E-2的学习率的迭代。结果是:精度为88.73%,灵敏度81.63%,特异性为92.47%,精度为85.10%,最后的F1得分为83.33%。三个模型的评估指标具有高于0.71的值,而第四则具有0.55的值,这表明该模型将存在良好的性能。通过增加图像的数量或通过制造混合模型可以提高这项工作。

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