统一的星识别冗余模式

Feilong Ji, Jie Jiang, Xinguo Wei
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引用次数: 7

摘要

星图识别算法被广泛应用于星跟踪器对观测恒星的识别,这对算法的可靠性和自适应能力提出了要求。然而,噪声,特别是视场中恒星的数量,仍然是原始星图算法的一个严重问题。提出了一种结合新冗余邻居图和冗余径向图的统一冗余图算法,用于星跟踪器的“空失”模式。由于邻居模式和径向模式分别描述了两种不同的分布,即邻居星形之间的分布和径向的分布,并且采用相似的冗余编码方案构造,因此将它们组合成统一的冗余模式并以二进制位串的形式存储,从而显著降低了车载数据库的内存需求。对于模式冗余和组合,以及采用模式综合而非多步匹配的相似分数测量,该算法对恒星位置噪声、星等噪声具有较强的鲁棒性,且在视场内存在稀疏恒星时仍然具有良好的性能。当与合成的星图进行比较时,我们的算法的识别率达到99.14%(位置噪声为0.4像素)。当视场内只有4颗星时,该算法仍能获得77.03%的识别率,远高于其他星图识别算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unified redundant patterns for star identification
Star pattern identification algorithms have employed widely to identify observed stars by star trackers which require reliabilities and adaptivities of algorithms. However, the noises especially the number of stars in field of view (FOV) are still serious problems for primitive star pattern algorithms. A novel algorithm of unified redundant patterns, which are combined with novel redundant neighbor patterns and redundant radial patterns, for star trackers in the “lost in space” mode is presented. Since neighbor patterns and radial patterns describe two different distributions, the distributions between neighbor stars each other and the distributions in the radial direction respectively, and constructed with similar redundant coding solution, they are combined to unified redundant patterns and stored by binary bit strings which reduce memory requirement of on-board database significantly. For the pattern redundancies and combinations, as well as similar score measurement applying patterns synthetically other than multiple-step match, consequently, the proposed algorithm is robust to the star positional noise, magnitude noise and performs still well when sparse stars are in FOV. When evaluated with synthesized star images, our algorithm can obtain identification rates of 99.14% (positional noise is 0.4 pixels). When there are only 4 stars in FOV, the algorithm can still obtain identification rate of 77.03%, much higher than the other star pattern identification algorithms.
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