Improved YOLOv7 model for insulator defect detection
Zhenyue Wang, Guowu Yuan, Hao Zhou, Yi Ma, Yutang Ma, Dong Chen

TL;DR
This paper enhances the YOLOv7 model for more accurate and efficient multi-type insulator defect detection by integrating modules like RFB and CA, and employing WIoU loss, resulting in improved detection metrics and reduced computational cost.
Contribution
The paper introduces an improved YOLOv7 model with novel modifications tailored for insulator defect detection, achieving higher accuracy and efficiency in complex scenarios.
Findings
1. 1.6% increase in mAP_0.5
2. Reduced model parameters by 3.2 million
3. Faster detection speed by 2.81 ms
Abstract
Insulators are crucial insulation components and structural supports in power grids, playing a vital role in the transmission lines. Due to temperature fluctuations, internal stress, or damage from hail, insulators are prone to injury. Automatic detection of damaged insulators faces challenges such as diverse types, small defect targets, and complex backgrounds and shapes. Most research for detecting insulator defects has focused on a single defect type or a specific material. However, the insulators in the grid's transmission lines have different colors and materials. Various insulator defects coexist, and the existing methods have difficulty meeting the practical application requirements. Current methods suffer from low detection accuracy and mAP0.5 cannot meet application requirements. This paper proposes an improved YOLOv7 model for multi-type insulator defect detection. First, our…
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Taxonomy
Methods*Communicated@Fast*How Do I Communicate to Expedia? · 1x1 Convolution · Dilated Convolution · Residual Connection · Convolution · Receptive Field Block
