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Research on Track Fastener Service Status Detection Based on Improved Yolov4 Model
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作者 Jing He Weiqi Wang Nengpu Yang 《Journal of Transportation Technologies》 2024年第2期212-223,共12页
As an important part of railway lines, the healthy service status of track fasteners was very important to ensure the safety of trains. The application of deep learning algorithms was becoming an important method to r... As an important part of railway lines, the healthy service status of track fasteners was very important to ensure the safety of trains. The application of deep learning algorithms was becoming an important method to realize its state detection. However, there was often a deficiency that the detection accuracy and calculation speed of model were difficult to balance, when the traditional deep learning model is used to detect the service state of track fasteners. Targeting this issue, an improved Yolov4 model for detecting the service status of track fasteners was proposed. Firstly, the Mixup data augmentation technology was introduced into Yolov4 model to enhance the generalization ability of model. Secondly, the MobileNet-V2 lightweight network was employed in lieu of the CSPDarknet53 network as the backbone, thereby reducing the number of algorithm parameters and improving the model’s computational efficiency. Finally, the SE attention mechanism was incorporated to boost the importance of rail fastener identification by emphasizing relevant image features, ensuring that the network’s focus was primarily on the fasteners being inspected. The algorithm achieved both high precision and high speed operation of the rail fastener service state detection, while realizing the lightweight of model. The experimental results revealed that, the MAP value of the rail fastener service state detection algorithm based on the improved Yolov4 model reaches 83.2%, which is 2.83% higher than that of the traditional Yolov4 model, and the calculation speed was improved by 67.39%. Compared with the traditional Yolov4 model, the proposed method achieved the collaborative optimization of detection accuracy and calculation speed. 展开更多
关键词 Yolov4 Model service Status of track Fasteners Detection and Recognition Data Augmentation Lightweight Network Attention Mechanism
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China Service Sector Growth on Track
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作者 Lan Shen Shuang Ding 《China's Foreign Trade》 2016年第4期24-25,共2页
Service sector growth nearly unchanged in April China Service Sector Tracker(CSST),based on high-frequency data,has been tracking China’s monthly tertiary industry growth since January2010.The headline tracker modera... Service sector growth nearly unchanged in April China Service Sector Tracker(CSST),based on high-frequency data,has been tracking China’s monthly tertiary industry growth since January2010.The headline tracker moderated at8.1%y/y in April from 8.2%y/y in March(Figure 1).We track value-added growth in five key sub-sectors of the tertiary industry,based on the structure of the official tertiary GDP.The 展开更多
关键词 FIGURE RATE China service Sector Growth on track HIGH
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