2023
DOI: 10.3390/electronics12214537
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Transmission Line Fault Detection and Classification Based on Improved YOLOv8s

Hao Qiang,
Zixin Tao,
Bo Ye
et al.

Abstract: Transmission lines are an important component of the power grid, while complex natural conditions can cause fault and delayed maintenance, which makes it quite important to locate and collect the fault parts efficiently. The current unmanned aerial vehicle (UAV) inspection on transmission lines makes up for these problems to some extent. However, the complex background information contained in the images collected by power inspection and the existing deep learning methods are mostly highly sensitive to complex… Show more

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Cited by 10 publications
(1 citation statement)
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“…At the same time, weights are calculated and applied to enhance the characteristics of the target information. It has been proven by the results of previous experiments that Triplet Attention is effective and practical in target detection tasks and can capture cross-dimensional dependencies [29]. This innovative attention mechanism has brought breakthroughs and advancements to the field of target detection.…”
Section: The Triplet Attention Modulementioning
confidence: 99%
“…At the same time, weights are calculated and applied to enhance the characteristics of the target information. It has been proven by the results of previous experiments that Triplet Attention is effective and practical in target detection tasks and can capture cross-dimensional dependencies [29]. This innovative attention mechanism has brought breakthroughs and advancements to the field of target detection.…”
Section: The Triplet Attention Modulementioning
confidence: 99%