Transmission Tower and Power Line Detection Based on Improved Solov2.

Wenjie Ma, Jie Xiao, Gaoyi Zhu,Jie Wang,Dingcheng Zhang,Xia Fang,Qiang Miao

IEEE Trans. Instrum. Meas.(2024)

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摘要
Aerial image detection of transmission tower and power line in transmission lines is the key technology for unmanned aerial vehicles (UAVs) intelligent inspection, path planning, and obstacle avoidance. Different from previous transmission lines detection methods, this work uses an instance segmentation algorithm to detect transmission towers and power lines. However, the aerial survey image’s large size and high resolution result in a low signal-to-noise ratio, while the high length to diameter ratio of power lines present great challenges. To solve these issues, this paper conducts instance segmentation of aerial survey images based on the improved Solov2 network. Specifically, the neck of the model has been replaced by PaFPN to enhance the feature fusion ability and reduce feature loss. The designed MaskIou branch processes feature relationships before and after the Mask branch of Solov2 and calculates the segmentation loss of each type of mask. Transfer Learning is adopted to pre-train the network and learn data from a single type of lightning conductor so that the network can better identify linear features with high length to diameter ratio that is difficult to recognize. Comparison tests with multiple instance segmentation networks show that the proposed improved network can achieve higher precision in the segmentation.
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关键词
Transmission tower and Power line detection,UAV,Instance segmentation,Solov2
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