基于主动和被动传感器的月球自主障碍物检测与避障

T. Hu, Liang He, Tao Cao, Hanmo Zhang, Yangxiu Hu, Zhouyuan Qian
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引用次数: 0

摘要

未来的月球着陆和探测需要在居住舱附近精确着陆,以及月球环形山、洞穴等一些复杂的科学目标环境,需要很高的定位和导航精度,而这些复杂区域地势崎岖,没有先验的环境信息。针对月球表面的特点,提出了一种基于光照梯度和三维点云的障碍物检测与选址方法。当距离月面较远时,确定图像采集的照明方向;选择感兴趣区域(ROI),提高检测效率;然后对每个ROI中的岩石和陨石坑进行检测,并将其作为具有几何和位置信息的拟合椭圆输出,构造掩模去除障碍物,生成安全着陆区。当距离月球表面相对较近时。对激光雷达检测到的点云数据进行运动补偿,根据局部重力方向进行校正,并进行体素网格下采样,利用形态递进滤波和随机采样一致性进行平面拟合和外部点障碍物采集,提取安全平坦区域的障碍物。在模拟月球着陆试验场中,采用了配备主动和被动传感器的无人机平台。基于物理运动学和动力学原理,对月球降落避障着陆过程进行了约简仿真,验证了算法的有效性。本文提出的方法能够实时在安全区域内进行准确探测和着陆,试验结果表明了这一点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Autonomous Obstacle Detection and Avoidance of Lunar Landing Based on Active and Passive Sensors
lunar landing and exploration in the future require precise landing near the living cabin, as well as some complex scientific target environments such as moon craters and caves, requiring high positioning and navigation accuracy, and these complex areas is rugged, there is no prior environmental information. In view of the characteristics of the lunar surface, an obstacle detection and site selection method based on illumination gradient and 3D point cloud is proposed. When the distance from the lunar surface is relatively far, the illumination direction of image acquisition is determined; the region of interest (ROI) is selected to improve detection efficiency; then detect the rocks and craters in each ROI, and output them as fitted ellipses with geometric and position information, construct a mask to remove obstacles, and generate a safe landing zone. When the distance from the lunar surface is relatively close. Perform motion compensation on the point cloud data detected by the lidar, correct it according to the local gravity direction, and perform voxel grid down-sampling, using morphological progressive filtering and random sampling consistency for plane fitting and external point obstacle collection, extract obstacles in safe flat areas. In the simulated lunar landing test site, the UAV platform equipped with active and passive sensors was used. Based on the principles of physical kinematics and dynamics, the reduction simulation of the obstacle avoidance landing process of lunar descent was carried out to verify the algorithm. The method presented in this paper is able to detect and landing accurately in a safe area in real time, which is shown in the test results.
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