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LiDAR-Based Non-Cooperative Tumbling Spacecraft Pose Tracking by Fusing Depth Maps and Point Clouds

机译:融合深度图和点云的基于LiDAR的非合作翻滚航天器姿态跟踪

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摘要

How to determine the relative pose between the chaser spacecraft and the high-speed tumbling target spacecraft at close range, which is an essential step in space proximity missions, is very challenging. This paper proposes a LiDAR-based pose tracking method by fusing depth maps and point clouds. The key point is to estimate the roll angle variation in adjacent sensor data by using the line detection and matching in depth maps. The simplification of adaptive voxelized grid point cloud based on the real-time relative position is adapted in order to satisfy the real-time requirement in the approaching process. In addition, the Iterative Closest Point algorithm is used to align the simplified sparse point cloud with the known target model point cloud in order to obtain the relative pose. Numerical experiments, which simulate the typical tumbling motion of the target and the approaching process, are performed to demonstrate the method. The experimental results show that the method has capability of estimating the real-time 6-DOF relative pose and dealing with large pose variations.
机译:如何确定近距离追赶航天器与高速翻滚目标航天器之间的相对姿态,这是近距离飞行任务中必不可少的步骤。本文提出了一种融合深度图和点云的基于LiDAR的姿态跟踪方法。关键是通过使用线检测和深度图中的匹配来估计相邻传感器数据中的侧倾角变化。适应基于实时相对位置的自适应体素化网格点云的简化,以满足接近过程中的实时性要求。另外,使用迭代最近点算法将简化的稀疏点云与已知目标模型点云对齐,以获得相对姿态。进行数值实验,模拟目标的典型翻滚运动和接近过程,以证明该方法。实验结果表明,该方法具有实时估计6-DOF相对姿态并处理较大姿态变化的能力。

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