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TinyDef-DETR: A DETR-based Framework for Defect Detection in Transmission Lines from UAV Imagery

Published: September 7, 2025 | arXiv ID: 2509.06035v5

By: Feng Shen , Jiaming Cui , Shuai Zhou and more

Potential Business Impact:

Finds tiny problems on power lines from drone photos.

Business Areas:
Intrusion Detection Information Technology, Privacy and Security

Automated defect detection from UAV imagery of transmission lines is a challenging task due to the small size, ambiguity, and complex backgrounds of defects. This paper proposes TinyDef-DETR, a DETR-based framework designed to achieve accurate and efficient detection of transmission line defects from UAV-acquired images. The model integrates four major components: an edge-enhanced ResNet backbone to strengthen boundary-sensitive representations, a stride-free space-to-depth module to enable detail-preserving downsampling, a cross-stage dual-domain multi-scale attention mechanism to jointly model global context and local cues, and a Focaler-Wise-SIoU regression loss to improve the localization of small and difficult targets. Together, these designs effectively mitigate the limitations of conventional detectors. Extensive experiments on both public and real-world datasets demonstrate that TinyDef-DETR achieves superior detection performance and strong generalization capability, while maintaining modest computational overhead. The accuracy and efficiency of TinyDef-DETR make it a suitable method for UAV-based transmission line defect detection, particularly in scenarios involving small and ambiguous targets.

Country of Origin
🇨🇳 China

Page Count
26 pages

Category
Computer Science:
CV and Pattern Recognition