2021
DOI: 10.1117/1.jrs.15.016519
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Stellar map centroid positioning based on dark channel denoising and feasibility of jitter detection on ZiYuan3 satellite platform

Abstract: Stellar map denoising and centroid positioning, which directly determine the postpositioning accuracy of star trackers, are key technologies in stellar map processing. Due to the influence of a complex starry sky background, there is often a large amount of noise in stellar maps, which makes it difficult to accurately locate the stellar centroid. A stellar map processing method based on dark channel denoising and continuous multiframe stellar map centroid positioning combined with centroid trajectory constrain… Show more

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Cited by 2 publications
(1 citation statement)
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“…Several denoising techniques have been developed recently to pre-filter the star images to preserve their shapes. Methodologies to ward off the interference of the background and enhance the star image-background contrast include the following: block adaptive threshold segmentation (BATS) [ 26 ], ring filter [ 27 ], hybrid filter [ 28 ], dark channel filter [ 29 ], and Improved Gaussian Side Window Filter (IGSWF) [ 30 ]. In the case of star sensors with small field-of-view (FOV), even muddled star image spots must be included in the attitude estimation process.…”
Section: Introductionmentioning
confidence: 99%
“…Several denoising techniques have been developed recently to pre-filter the star images to preserve their shapes. Methodologies to ward off the interference of the background and enhance the star image-background contrast include the following: block adaptive threshold segmentation (BATS) [ 26 ], ring filter [ 27 ], hybrid filter [ 28 ], dark channel filter [ 29 ], and Improved Gaussian Side Window Filter (IGSWF) [ 30 ]. In the case of star sensors with small field-of-view (FOV), even muddled star image spots must be included in the attitude estimation process.…”
Section: Introductionmentioning
confidence: 99%