无人机系统自主太阳能电站检测的虚拟现实仿真

Fabio Augusto de Alcantara Andrade, A. Sivertsen, Carlos Alberto Moraes Correia, N. Belbachir, Lucas Costa Amaral De Sousa, Victor Müller Pereira Rufino, Eduardo Pimenta Petrópolis, Erick Rodrigues e Silva, Victor Hugo Rinaldi Fortes Henriques
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引用次数: 2

摘要

介绍了一种用于无人机太阳能电站巡检的虚拟现实仿真环境的开发。这项工作的目的是提供一种工具来测试自主检测和计算机视觉算法,并为深度学习生成真实的合成数据。这些技术需要真实的合成数据,这些数据可以通过高质量的图像引擎获得,例如用于游戏开发的图像引擎。在这项工作中,虚幻引擎4被用来托管虚拟太阳能发电厂。太阳能板是用Blender和Photoshop建模的。微软的AirSim插件用于模拟无人机运动,连同ArduPilot软件在环飞行控制器。通过对拥有9200块电池板的工厂进行虚拟自主检查来评估环境,其中基于航空图像中缺陷的像素位置,使用地理参考算法在光栅工厂布局中定位有缺陷的太阳能电池板。通过对1000多张图像进行虚拟检测,利用地理参考算法对布局厂缺陷板进行定位,其北轴误差为0.34米,东轴误差为0.26米,对于组件布置稀疏的大型太阳能电站来说,这是可以接受的。
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Virtual Reality Simulation of Autonomous Solar Plants Inspections with Unmanned Aerial Systems
This paper presents the development of a virtual reality simulation environment for Unmanned Aerial Systems (UAS) solar plant inspection. The objective of this work is to provide a tool to test autonomous inspection and computer vision algorithms and generate realistic synthetic data for deep learning. These techniques demand realistic synthetic data, which can be made available by high-quality graphics engines, such as the ones used for game development. In this work, Unreal Engine 4 is used to host the virtual solar plant. The solar panels were modeled using Blender and Photoshop. Microsoft's AirSim plugin is used to simulate the UAS motion, together with the ArduPilot Software-In- The-Loop flight controller. The environment was evaluated through a virtual autonomous inspection of a plant with 9200 panels, where a georeferencing algorithm was used to locate the defective solar panel in a raster plant layout, based on the pixel position of the defects in the aerial images. The virtual inspection resulted on more than 1000 images and the localization of the defective panels in the layout plant using the georeferencing algorithm had an error of 0.34 meters on the North axis and 0.26 meters on the East axis, which is acceptable for large solar plants with sparse modules' arrangement.
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