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SDG-CSNet: a detection network based on spatial detail guidance and clue screening for substation equipment

Zehui Zhang, Na Dong, Zhendong Guo, Xiaoming Mai

Year
2025
Citations
1

Abstract

Abstract Substation equipment carries critical operational information. For the intelligent monitoring of power systems, the deployment of camera-equipped wheeled robots and unmanned aerial vehicles for image acquisition and real-time detection of substation equipment represents an essential routine inspection methodology. While modern detection algorithms have achieved widespread adoption in power industry applications, state-of-the-art methods still face significant performance degradation when handling dense small-target detection tasks in complex field environments. To address these limitations, this paper proposes a novel spatial detail-guided and clue-screening network (SDG-CSNet), including an efficient clue-scanning module (ECSM), visual detail retention (VDR), and a detail-guided path aggregation network (DG-PAN). To tackle the degradation of image quality induced by complex illumination conditions, the input images undergo edge detail smoothing via preprocessing, while the ECSM utilizes a rescreening mechanism to effectively integrate local connectivity with global receptive fields for feature reconstruction. Addressing the characteristics of densely distributed and small-sized objects, VDR employs pixel-adaptive downsampling strategies to maintain high-frequency information. Moreover, DG-PAN implements delayed multi-scale fusion of shallow-level features, thereby guiding feature maps to adjust dynamically. Experiments demonstrate that SDG-CSNet achieves a state-of-the-art performance with 57.3% mAP. The detection speed, model size, and computation are 59.9 frames per second, 6.25 M, and 14.1 G. SDG-CSNet demonstrates superior robustness in low-light and motion-blur conditions. This work provides a practical and efficient solution for substation equipment detecting applications.

Keywords

Computer scienceReal-time computingRemote sensingGeography

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