Zhao Jiannan, Zhao Qidong, Wu Chenggen, Li Zhiteng, Shuang Feng
Guangxi Key Laboratory of Intelligent Control and Maintenance of Power Equipment, School of Electrical Engineering, Guangxi University, Nanning 530004, China.
State Grid Lishui Power Supply Company, Grid Zhejiang Electric Power Company, State Grid Corporation of China, Lishui 323000, China.
Biomimetics (Basel). 2025 Feb 10;10(2):99. doi: 10.3390/biomimetics10020099.
Unmanned aerial vehicles (UAVs) offer an efficient solution for power grid maintenance, but collision avoidance during return flights is challenged by crossing power lines, especially for small drones with limited computational resources. Conventional visual systems struggle to detect thin, intricate power lines, which are often overlooked or misinterpreted. While deep learning methods have improved static power line detection in images, they still struggle with dynamic scenarios where collision risks are not detected in real time. Inspired by the hypothesis that the Lobula Giant Movement Detector (LGMD) distinguishes sparse and incoherent motion in the background by detecting continuous and clustered motion contours of the looming object, we propose a Scale-Invariant Looming Detector (SILD). SILD detects motion by preprocessing video frames, enhances motion regions using attention masks, and simulates biological arousal to recognize looming threats while suppressing noise. It also predicts impending collisions during high-speed flight and overcomes the limitations of motion vision to ensure consistent sensitivity to looming objects at different scales. We compare SILD with existing static power line detection techniques, including the Hough transform and D-LinkNet with a dilated convolution-based encoder-decoder architecture. Our results show that SILD strikes an effective balance between detection accuracy and real-time processing efficiency. It is well suited for UAV-based power line detection, where high precision and low-latency performance are essential. Furthermore, we evaluated the performance of the model under various conditions and successfully deployed it on a UAV-embedded board for collision avoidance testing at power lines. This approach provides a novel perspective for UAV obstacle avoidance in power line scenarios.
无人机为电网维护提供了一种高效的解决方案,但在返程飞行过程中,穿越输电线时的避撞面临挑战,尤其是对于计算资源有限的小型无人机。传统视觉系统难以检测到细而复杂的输电线,这些输电线常常被忽视或误判。虽然深度学习方法在图像中静态输电线检测方面有所改进,但在动态场景中,它们仍难以实时检测碰撞风险。受小叶巨型运动探测器(LGMD)通过检测逼近物体的连续和聚集运动轮廓来区分背景中稀疏和不连贯运动这一假设的启发,我们提出了一种尺度不变逼近探测器(SILD)。SILD通过对视频帧进行预处理来检测运动,使用注意力掩码增强运动区域,并模拟生物唤醒以识别逼近威胁同时抑制噪声。它还能预测高速飞行过程中的即将发生的碰撞,并克服运动视觉的局限性,以确保在不同尺度下对逼近物体具有一致的敏感度。我们将SILD与现有的静态输电线检测技术进行了比较,包括霍夫变换和具有基于扩张卷积的编码器 - 解码器架构的D - LinkNet。我们的结果表明,SILD在检测精度和实时处理效率之间取得了有效的平衡。它非常适合基于无人机的输电线检测,在这种情况下高精度和低延迟性能至关重要。此外,我们在各种条件下评估了该模型的性能,并成功将其部署在无人机嵌入式板上,用于在输电线处进行避撞测试。这种方法为电力线场景中的无人机避障提供了一个新的视角。