Shi Chenguang, Zhang Rui, Yu Yong, Sun Xingzhe, Lin Xiaodong
Innovation Academy for Microsatellites of Chinese Academy of Sciences, Room 426, Building 4, 99 Haike Road, Shanghai 201203, China.
University of Chinese Academy of Sciences, Beijing 100049, China.
Sensors (Basel). 2021 Aug 28;21(17):5786. doi: 10.3390/s21175786.
The star tracker is widely used for high-accuracy missions due to its high accuracy position high autonomy and low power consumption. On the other hand, the ability of interference suppression of the star tracker has always been a hot issue of concern. A SLIC-DBSCAN-based algorithm for extracting effective information from a single image with strong interference has been developed in this paper to remove interferences. Firstly, the restricted LC (luminance-based contrast) transformation is utilized to enhance the contrast between background noise and the large-area interference. Then, SLIC (the simple linear iterative clustering) algorithm is adopted to segment the saliency map and in this process, optimized parameters are harnessed. Finally, from these segments, features are extracted and superpixels with similar features are combined by using DBSCAN (density-based spatial clustering of applications with noise). The proposed algorithm is proved effective by successfully removing large-area interference and extracting star spots from the sky region of the real star image.
星敏感器因其高精度、高自主性和低功耗而被广泛应用于高精度任务中。另一方面,星敏感器的干扰抑制能力一直是备受关注的热点问题。本文提出了一种基于SLIC-DBSCAN的算法,用于从具有强干扰的单幅图像中提取有效信息以去除干扰。首先,利用受限LC(基于亮度的对比度)变换来增强背景噪声与大面积干扰之间的对比度。然后,采用SLIC(简单线性迭代聚类)算法对显著图进行分割,并在此过程中利用优化参数。最后,从这些片段中提取特征,并使用DBSCAN(基于密度的带有噪声的空间聚类应用)将具有相似特征的超像素进行合并。通过成功去除真实星图天空区域的大面积干扰并提取星点,证明了所提算法的有效性。