自主无人机电力线巡检系统中组件和故障的实时机载检测

N. Ayoub, Peter Schneider-Kamp
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引用次数: 8

摘要

电力线组件的检查由专业公司定期进行,以识别可能的故障并评估关键基础设施的状态。无人机系统代表了该领域的一种新兴技术替代方案,具有更安全、更高效、成本更低的检查承诺。在Drones4Energy项目中,我们致力于基于视觉的超视距(BVLOS)电力线检测架构,用于自动和自主地实时检测无人机上的组件和故障。在本文中,我们提出了这种架构的视觉系统的第一步。我们训练深度神经网络(dnn),并调整它们在不同条件下的可靠性,如使用的相机、照明、角度和背景的变化。为了实时实现该架构,在不同的硬件上进行了实验评估和比较,如树莓派4、Nvidia Jetson Nano、Nvidia Jetson TX2和Nvidia Jetson AGX Xavier。使用这种单板器件(sbd)是拟议的电力线检查架构设计的一个组成部分。实验结果表明,该方法能够有效地实现车载电力线的实时视觉检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-time On-board Detection of Components and Faults in an Autonomous UAV System for Power Line Inspection
The inspection of power line components is periodically conducted by specialized companies to identify possible faults and assess the state of the critical infrastructure. UAV-systems represent an emerging technological alternative in this field, with the promise of safer, more efficient, and less costly inspections. In the Drones4Energy project, we work toward a vision-based beyond-visual-line-of-sight (BVLOS) power line inspection architecture for automatically and autonomously detecting components and faults in real-time on board of the UAV. In this paper, we present the first step towards the vision system of this architecture. We train Deep Neural Networks (DNNs) and tune them for reliability under different conditions such as variations in camera used, lighting, angles, and background. For the purpose of real-time on-board implementation of the architecture, experimental evaluations and comparisons are performed on different hardware such as Raspberry Pi 4, Nvidia Jetson Nano, Nvidia Jetson TX2, and Nvidia Jetson AGX Xavier. The use of such Single Board Devices (SBDs) is an integral part of the design of the proposed power line inspection architecture. Our experimental results demonstrate that the proposed approach can be effective and efficient for fully-automatic real-time on-board visual power line inspection.
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