JOURNAL ARTICLE

Improved YOLOv7 model for insulator defect detection

Zhenyue WangGuowu YuanHao ZhouYi MaYutang MaDong Chen

Year: 2024 Journal:   Electronic Research Archive Vol: 32 (4)Pages: 2880-2896   Publisher: American Institute of Mathematical Sciences

Abstract

<abstract> <p>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 you only look once version 7 (YOLOv7) model for multi-type insulator defect detection. First, our model replaces the spatial pyramid pooling cross stage partial network (SPPCSPC) module with the receptive filed block (RFB) module to enhance the network's feature extraction capability. Second, a coordinate attention (CA) mechanism is introduced into the head part to enhance the network's feature representation ability and to improve detection accuracy. Third, a wise intersection over union (WIoU) loss function is employed to address the low-quality samples hindering model generalization during training, thereby improving the model's overall performance. The experimental results indicate that the proposed model exhibits enhancements across various performance metrics. Specifically, there is a 1.6% advancement in mAP_0.5, a corresponding 1.6% enhancement in mAP_0.5:0.95, a 1.3% elevation in precision, and a 1% increase in recall. Moreover, the model achieves parameter reduction by 3.2 million, leading to a decrease of 2.5 GFLOPS in computational cost. Notably, there is also an improvement of 2.81 milliseconds in single-image detection speed. This improved model can detect insulator defects for diverse materials, color insulators, and partial damage shapes in complex backgrounds.</p> </abstract>

Keywords:
Computer science Materials science

Metrics

2
Cited By
1.06
FWCI (Field Weighted Citation Impact)
17
Refs
0.65
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

Advanced Neural Network Applications
Physical Sciences →  Computer Science →  Computer Vision and Pattern Recognition
Industrial Vision Systems and Defect Detection
Physical Sciences →  Engineering →  Industrial and Manufacturing Engineering
High voltage insulation and dielectric phenomena
Physical Sciences →  Materials Science →  Materials Chemistry

Related Documents

JOURNAL ARTICLE

Improved YOLOv7 Model for Insulator Surface Defect Detection

Xiaoxuan HongFei WangJie Ma

Journal:   2022 IEEE 5th Advanced Information Management, Communicates, Electronic and Automation Control Conference (IMCEC) Year: 2022 Pages: 1667-1672
JOURNAL ARTICLE

Insulator Defect Detection Model based on Improved YOLOv7

Journal:   International Journal of Science and Engineering Applications Year: 2024
JOURNAL ARTICLE

Insulator-Defect Detection Algorithm Based on Improved YOLOv7

Jianfeng ZhengHang WuHan ZhangZhaoqi WangWeiyue Xu

Journal:   Sensors Year: 2022 Vol: 22 (22)Pages: 8801-8801
© 2026 ScienceGate Book Chapters — All rights reserved.