Insulator Defect Detection via a Residual Denoising Diffusion Mechanism
Li Zhang, Mengyang Song, Huaping Guo, Yange Sun, Xinxia Wang

TL;DR
This paper introduces a new method for detecting defective insulators in power lines by using a denoising diffusion model to handle environmental noise and improve detection accuracy.
Contribution
A novel diffusion-based detector (IDDet) that uses residual denoising to improve insulator defect localization in noisy environments.
Findings
IDDet achieves a best mean average precision (mAP) of 92.3% in noisy environments.
The residual denoising mechanism effectively simulates and removes environmental noise for accurate defect localization.
Abstract
Insulators are critical components of transmission lines, and defective insulators pose a serious threat to the safety of power supply systems. Timely detection of these defects is crucial to prevent catastrophic consequences for human lives and property. However, insulator defects are often small and easily affected by the noise of rain, fog, sunlight, dirt, and other pollutants, making detection challenging. We observe that diffusion models learn data distribution by progressively introducing noise and subsequently performing denoising. The progressive denoising mechanism can naturally simulate the randomness of environmental noise. Based on this observation, we treat the localization of insulator defects as a denoising-based recovery process, where the true defect bounding boxes are progressively reconstructed from noisy representations. To this end, we propose a novel…
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Taxonomy
TopicsHigh voltage insulation and dielectric phenomena · Advanced Neural Network Applications · Infrastructure Maintenance and Monitoring
