利用无人机实时主动探测目标和路径规划

Fangping Chen, Yuheng Lu, Yunyi Li, Xiaodong Xie
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引用次数: 3

摘要

本文提出了一种新的方法,使无人机能够在未知环境中主动寻找目标并拍摄目标,同时成功地避开周围的障碍物并规划优化路线。由于无人机的计算能力有限,我们获取了周围物体的点云数据,并选择了最佳的点云分割方法,对采集到的点云数据进行实时语义分割。将具有语义属性的点云数据合并为体素。通过欧几里得符号距离场(esdf)实时重建障碍物表面与周围障碍物之间的距离和角度,调整无人机的云台角度和焦距,利用二维图像识别技术精确拍摄目标的照片。考虑到无人机电力检测规模的不断扩大,采用本文提出的方法可以提高输电线路精细检测的效率。
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 active detection of targets and path planning using UAVs
This article proposes a new method that enables Unmanned Aerial Vehicles (UAVs) to actively find targets and shoot photographs of them in an unknown environment, while successfully avoiding surrounding obstacles and planning optimize routes. Owing to the limited computing ability on the UAVs, we obtained the point cloud data of surrounding objects, and selected the best segmentation method of the point cloud to perform real-time semantic segmentation on the collected point cloud data. The point cloud data with semantic attributes were merged into voxels. We reconstruct the real-time distance and angle between the surface of obstacles and the surrounding obstacles through Euclidean Signed Distance Fields (ESDFs), and adjust the gimbal angle and focal length of UAVs and use the two-dimensional image recognition to shoot the photographs of the target precisely. Considering the increasing scale of UAVs power inspections, we can improve the efficiency of fine inspections of power transmission lines by using the method we proposed.
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