Christian John A, Derksen Harm, Watkins Ryan
Guggenheim School of Aerospace Engineering, Georgia Institute of Technology, Atlanta, GA 30332 USA.
Department of Mathematics, Northeastern University, Boston, MA 02115 USA.
J Astronaut Sci. 2021;68(4):1056-1144. doi: 10.1007/s40295-021-00287-8. Epub 2021 Oct 21.
It is often necessary to identify a pattern of observed craters in a single image of the lunar surface and without any prior knowledge of the camera's location. This so-called "lost-in-space" crater identification problem is common in both crater-based terrain relative navigation (TRN) and in automatic registration of scientific imagery. Past work on crater identification has largely been based on heuristic schemes, with poor performance outside of a narrowly defined operating regime (e.g., nadir pointing images, small search areas). This work provides the first mathematically rigorous treatment of the general crater identification problem. It is shown when it is (and when it is not) possible to recognize a pattern of elliptical crater rims in an image formed by perspective projection. For the cases when it is possible to recognize a pattern, descriptors are developed using invariant theory that provably capture all of the viewpoint invariant information. These descriptors may be pre-computed for known crater patterns and placed in a searchable index for fast recognition. New techniques are also developed for computing pose from crater rim observations and for evaluating crater rim correspondences. These techniques are demonstrated on both synthetic and real images.
通常需要在月球表面的单张图像中识别观测到的环形山模式,且事先不知道相机的位置。这种所谓的“太空迷失”环形山识别问题在基于环形山的地形相对导航(TRN)和科学图像的自动配准中都很常见。过去关于环形山识别的工作主要基于启发式方案,在狭窄定义的操作范围之外(例如,天底指向图像、小搜索区域)性能较差。这项工作首次对一般的环形山识别问题进行了数学上严格的处理。研究表明了在透视投影形成的图像中何时(以及何时不)能够识别椭圆形环形山边缘的模式。对于能够识别模式的情况,利用不变量理论开发了描述符,这些描述符可证明捕获了所有视点不变信息。这些描述符可以针对已知的环形山模式预先计算,并放入可搜索的索引中以便快速识别。还开发了用于从环形山边缘观测计算姿态以及评估环形山边缘对应关系的新技术。这些技术在合成图像和真实图像上都得到了验证。