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Study on Boundaries of Eigenvalues in SVD Method for Autonomous Star Identification

机译:SVD恒星识别中特征值的边界研究。

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The singular values are important invariant features in singular value decomposition (SVD) method for autonomous star identification. This paper theoretically analyzes the inherent relationship between the star vectors in field of view (FOV) and the eigenvalues of the Hermitian matrix formed by star vectors, which is performed as an equivalent study on singular values of the star vector matrix. Firstly, the SVD method for star identification is introduced briefly. Secondly, starting with the case of two star vectors, the boundaries of maximum, middle and minimum eigenvalues factorized by the Hermitian matrix is obtained and then the results with regard to n star vectors are derived in detail. In simulation, the statistical data verifies the presented results by selecting star vectors of random star tracker orientations in actual catalog. The conclusion of this study gives the explicit boundaries and provides useful guidance for matching eigenvalues in star identification process.
机译:在用于自主恒星识别的奇异值分解(SVD)方法中,奇异值是重要的不变性特征。本文从理论上分析了视场中的星形矢量(FOV)与星形矢量形成的埃尔米特矩阵特征值之间的内在联系,以此等效研究星形矢量矩阵的奇异值。首先简要介绍了SVD的恒星识别方法。其次,从两个星形矢量开始,获得由埃尔米特矩阵分解的最大,中间和最小特征值的边界,然后详细推导关于n个星形矢量的结果。在仿真中,统计数据通过在实际目录中选择随机恒星跟踪器方向的恒星向量来验证显示的结果。这项研究的结论给出了明确的界限,并为在恒星识别过程中匹配特征值提供了有用的指导。

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