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Star Catalog Generation for Satellite Attitude Navigation Using Density Based Clustering | Science Publications

机译:使用基于密度的聚类生成用于卫星姿态导航的星表科学出版物

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> >A new method to generate star catalog using density-based clustering is proposed. It identifies regions of a high star density by using Density-Based Spatial Clustering of Application with Noise (DBSCAN) algorithm. Reducing the number stars performed by storing the brightest star in each cluster. The brightest star and all non-clustered members are then stored as a navigation star candidate. Monte Carlo simulation has performed to generate random FOV to check the uniformity of the new catalog. Succeed parameter is if there are at least three stars in the FOV. The simulation results compare between DBSCAN method and Magnitude Filtering Method (MFM) which is the common method to generate star catalog. The result shows that DBSCAN method is better than MFM such for number of star 846 DBSCAN has success 100% while MFM 95%. It concluded that density-based clustering is a promising method to select navigation star for star catalog generation.
机译: > >提出了一种使用基于密度的聚类生成星表的新方法。它通过使用基于噪声的应用程序基于密度的空间聚类(DBSCAN)算法来识别高恒星密度区域。通过在每个群集中存储最亮的恒星来减少恒星的数量。然后,将最亮的星星和所有非聚集成员存储为导航星候选。蒙特卡洛模拟已执行以生成随机视场以检查新目录的一致性。成功参数是视场中是否至少有三颗星。仿真结果比较了DBSCAN方法和星号目录生成的常用方法-幅值滤波方法(MFM)。结果表明,星号846 DBSCAN的成功率100%,而MFM的95%,因此DBSCAN方法优于MFM。结论是,基于密度的聚类是选择导航星用于星表生成的有前途的方法。

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