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Design of Relative Motion and Attitude Profiles for Three-Dimensional Resident Space Object Imaging with a Laser Rangefinder

机译:三维居民空间对象成像与激光测距仪的相对运动和姿态曲线设计

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This paper focuses on the aerospace application of a single beam laser rangefinder (LRF) for 3D imaging, shape detection, and reconstruction in the context of a space-based space situational awareness (SSA) mission scenario. The primary limitation to 3D imaging from LRF point clouds is the one-dimensional nature of the single beam measurements. A method that combines relative orbital motion and scanning attitude motion to generate point clouds has been developed and the design and characterization of multiple relative motion and attitude maneuver profiles are presented. The target resident space object (RSO) has the shape of a generic telecommunications satellite. The shape and attitude of the RSO are unknown to the chaser satellite however, it is assumed that the RSO is un-cooperative and has fixed inertial pointing. All sensors in the metrology chain are assumed ideal. A previous study by the authors used pure Keplerian motion to perform a similar 3D imaging mission at an asteroid. A new baseline for proximity operations maneuvers for LRF scanning, based on a waypoint adaptation of the Hill-Clohessy-Wiltshire (HCW) equations is examined. Propellant expenditure for each waypoint profile is discussed and combinations of relative motion and attitude maneuvers that minimize the propellant used to achieve a minimum required point cloud density are studied. Both LRF strike-point coverage and point cloud density are maximized; the capability for 3D shape registration and reconstruction from point clouds generated with a single beam LRF without catalog comparison is proven. Next, a method of using edge detection algorithms to process a point cloud into a 3D modeled image containing reconstructed shapes is presented. Weighted accuracy of edge reconstruction with respect to the true model is used to calculate a qualitative "metric" that evaluates effectiveness of coverage. Both edge recognition algorithms and the metric are independent of point cloud density, therefore they are utilized to compare the quality of point clouds generated by various attitude and waypoint command profiles. The RSO model incorporates diverse irregular protruding shapes, such as open sensor covers, instrument pods and solar arrays, to test the limits of the algorithms. This analysis is used to mathematically prove that point clouds generated by a single-beam LRF can achieve sufficient edge recognition accuracy for SSA applications, with meaningful shape information extractable even from sparse point clouds. For all command profiles, reconstruction of RSO shapes from the point clouds generated with the proposed method are compared to the truth model and conclusions are drawn regarding their fidelity.
机译:本文侧重于单一光束激光测距仪(LRF)的航空航天应用,用于3D成像,形状检测和在基于空间的空间情境意识(SSA)使命方案的背景下的重建。来自LRF点云的3D成像的主要限制是单光束测量的一维性质。已经开发了一种结合相对轨道运动和扫描姿态运动来生成点云的方法,并且呈现了多个相对运动和姿态操纵概况的设计和表征。目标驻留空间对象(RSO)具有通用电信卫星的形状。 RSO的形状和姿态对追踪卫星未知,然而,假设RSO是不合作的并且具有固定的惯性指向。假设计量链中的所有传感器都是理想的。作者之前的一项研究使用了纯粹的开普莱运动,在小行星上执行类似的3D成像任务。研究了基于LRF扫描的近距离操作的新基线,基于Hill-Clohessy-Wiltshire(HCW)方程的航路点调整。讨论了每个线路分布的推进剂支出,并研究了最小化用于实现最小所需点云密度的推进剂的相对运动和姿态操纵的组合。 LRF冲击点覆盖和点云密度都最大化;已经证明了没有目录比较的单光束LRF产生的点云的3D形状登记和重建的能力。接下来,呈现了使用边缘检测算法来处理点云的方法,进入包含重建形状的3D建模图像。相对于真实模型的边缘重建的加权精度用于计算评估覆盖有效性的定性“公制”。边缘识别算法和度量均独立于点云密度,因此它们用于比较各种姿态和航点命令配置文件产生的点云的质量。 RSO模型采用不同的不规则突出形状,如开放式传感器盖,仪器吊舱和太阳阵列,以测试算法的限制。该分析用于数学上证明由单束LRF产生的点云可以实现SSA应用的足够的边缘识别精度,即使从稀疏点云也可以提取有意义的形状信息。对于所有命令配置文件,将使用所提出的方法生成的点云重建RSO形状与真相模型进行比较,并绘制了他们的保真度的结论。

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