YOLOv11-Based UAV Foreign Object Detection for Power Transmission Lines
Depeng Gao, Yihan Yin, Han Zhang, Changping Li, Bingshu Wang
Abstract
Foreign object detection on transmission lines poses a significant threat to power grid security, while conventional manual inspection methods are inefficient and pose safety risks. To overcome the challenges of detecting foreign objects in complex environments, this paper proposes an enhanced YOLOv11_SDI detection framework with two key contributions. Firstly, a novel hierarchical Spatial-channel Dynamic Inference (SDI) module is integrated into YOLOv11, employing an adaptive feature fusion mechanism to enhance multi-scale representation. Secondly, a lightweight spatial attention unit is introduced to improve region-of-interest localization without compromising computational efficiency. In addition, the publicly available FOTL_Drone dataset is expanded to 5980 UAV images through systematic data augmentation, covering six critical foreign object categories. Comprehensive experiments validate the model’s superior performance, achieving state-of-the-art 95.2% [email protected] with only 3.74 M parameters, demonstrating its potential for practical transmission line inspection applications.