A Novel Visual-Based Terrain Relative Navigation System for Planetary Applications Based on Mask R-CNN and Projective Invariants

Roberto Del Prete, Alfredo Renga
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引用次数: 1

Abstract

In the framework of autonomous spacecraft navigation, this manuscript proposes a novel vision-based terrain relative navigation (TRN) system called FederNet. The developed system exploits a pattern of observed craters to perform an absolute position measurement. The obtained measurements are thus integrated into a navigation filter to estimate the spacecraft state in terms of position and velocity. Recovering crater locations from elevation imagery is not an easy task since sensors can generate images with vastly different appearances and qualities. Hence, several problems have been faced. First, the crater detection problem from elevation images, second, the crater matching problem with known craters, the spacecraft position estimation problem from retrieved matches, and its integration with a navigation filter. The first problem was countered with the robust approach of deep learning. Then, a crater matching algorithm based on geometric descriptors was developed to solve the pattern recognition problem. Finally, a position estimation algorithm was integrated with an Extended Kalman Filter, built with a Keplerian propagator. This key choice highlights the performance achieved by the developed system that could benefit from more accurate propagators. FederNet system has been validated with an experimental analysis on real elevation images. Results showed that FederNet is capable to cruise with a navigation accuracy below 400 meters when a sufficient number of well-distributed craters is available for matching. FederNet capabilities can be further improved with higher resolution data and a data fusion integration with other sensor measurements, such as the lunar GPS, nowadays under investigation by many researchers.

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基于Mask R-CNN和投影不变量的行星地形相对导航系统
在航天器自主导航的框架下,本文提出了一种新的基于视觉的地形相对导航系统FederNet。开发的系统利用观测到的陨石坑模式进行绝对位置测量。因此,所获得的测量值被集成到导航滤波器中,以根据位置和速度来估计航天器状态。从高程图像中恢复陨石坑位置并非易事,因为传感器可以生成外观和质量截然不同的图像。因此,出现了几个问题。首先,从高程图像中检测陨石坑的问题,其次,陨石坑与已知陨石坑的匹配问题,从检索到的匹配中估计航天器位置的问题,以及它与导航滤波器的集成。第一个问题是用稳健的深度学习方法解决的。然后,开发了一种基于几何描述符的弹坑匹配算法来解决模式识别问题。最后,将位置估计算法与扩展卡尔曼滤波器相结合,该滤波器由开普勒传播算子构建。这一关键选择突出了所开发的系统所取得的性能,该系统可以从更准确的传播算子中受益。FederNet系统已经通过对真实高程图像的实验分析进行了验证。结果表明,当有足够数量分布良好的陨石坑可供匹配时,FederNet能够以低于400米的导航精度进行巡航。FederNet的能力可以通过更高分辨率的数据和与其他传感器测量的数据融合集成来进一步提高,如月球GPS,目前许多研究人员正在研究中。
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