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首页> 外文期刊>Advances in Meteorology >ResNet15: Weather Recognition on Traffic Road with Deep Convolutional Neural Network
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ResNet15: Weather Recognition on Traffic Road with Deep Convolutional Neural Network

机译:Reset15:与深卷积神经网络的交通道路上的天气识别

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摘要

Severe weather conditions will have a great impact on urban traffic. Automatic recognition of weather condition has important application value in traffic condition warning, automobile auxiliary driving, intelligent transportation system, and other aspects. With the rapid development of deep learning, deep convolutional neural networks (CNN) are used to recognize weather conditions on traffic road. A new simplified model named ResNet15 is proposed based on the residual network ResNet50 in this paper. The convolutional layers of ResNet15 are utilized to extract weather characteristics, and then the characteristics extracted at the previous layer are shortcut to the next layer through four groups of residual modules. Finally, the weather images are classified and recognized through the fully connected layer and Softmax classifier. In addition, we build a medium-scale dataset of weather images on traffic road, called “WeatherDataset-4,” which consists of 4 categories and contains 4983 weather images covering most of the severe weather. In this paper, ResNet15 is used to train and test on the “WeatherDataset-4,” and desirable recognition results are obtained. The evaluation of a large number of experiments demonstrates that the proposed ResNet15 is superior to traditional network models such as ResNet50 in recognition accuracy, recognition speed, and model size.
机译:恶劣的天气条件将对城市交通产生很大影响。自动识别天气条件具有交通状况警告,汽车辅助驾驶,智能交通系统等方面具有重要应用价值。随着深度学习的快速发展,深度卷积神经网络(CNN)用于识别交通道路上的天气状况。基于本文的残余网络Reset50提出了一种名为Resnet15的新简化模型。 Reset15的卷积层用于提取天气特性,然后通过四组残留模块,在上一层中提取的特性是快捷的。最后,通过完全连接的图层和Softmax分类器分类和识别天气图像。此外,我们在交通道路上建立了一个中等规模的天气图像数据集,称为“WeatherDataset-4”,由4个类别组成,包含4983个天气图像,覆盖大部分恶劣天气。在本文中,ResET15用于训练和测试“天气ataSet-4”,获得理想的识别结果。大量实验的评估表明,所提出的Reset15优于传统的网络模型,例如Reset50,识别精度,识别速度和模型尺寸。

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