55 / 2024-08-15 16:34:03
An Improved YOLOv8 Detection Model for Catenary Components Using Long-Distance Feature Dependence
High-speed railway, YOLOv8, catenary support component detection, Long-distance dependency.
终稿
ShiLinjun / 西南交通大学
LiuWenqiang / 西南交通大学;香港理工大学
YangHaonan / 西南交通大学
MaNing / 西南交通大学
LiuZhigang / 西南交通大学
ChenXing / 西南交通大学
In the condition monitoring system of high-speed railway catenary support components, the positioning and recognition performance directly affects the performance of the state detection tasks such as anomaly detection and defect recognition. Due to limitations such as complex background and long-distance feature extraction, traditional defect detection methods have difficulty fully exerting their detection performance. Therefore, an improved YOLOv8 model is proposed to solve these detection problems. First, a long short-term memory (LSTM) module is added to the backbone middle layer to more effectively capture the object’s long-distance dependencies, improving the ability to extract long-distance features in sequence data. Secondly, a large separable kernel attention (LSKA) module is introduced to the spatial pyramid pooling feature (SPPF) layer to further improve the model’s ability to capture long-range image dependencies. Experimental results show that the detection framework achieves a detection accuracy (mean average precision, mAP) of 75.3% while maintaining low computational complexity, proving its effectiveness in catenary detection. Therefore, the proposed method can be effectively applied to the detection task of catenary components.
重要日期
  • 会议日期

    10月31日

    2024

    11月03日

    2024

  • 09月30日 2024

    初稿截稿日期

  • 11月12日 2024

    注册截止日期

主办单位
Anhui University
Xi’an Jiaotong University
Harbin Institute of Technology
IEEE Instrumentation & Measurement Society
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