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首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >A Real-Time Star Tailing Removal Method Based on Fast Blur Kernel Estimations
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A Real-Time Star Tailing Removal Method Based on Fast Blur Kernel Estimations

机译:基于快速模糊内核估计的实时明星尾尾拆除方法

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The number of star points and the accuracy of star centroid extraction are the key factors that affect the performance of the star sensor under high dynamic conditions. The motion blur results in the star point trailing, which consequently leads to the decline of star centroid extraction accuracy and in some cases lead to extraction failure. In order to improve the dynamic performance of the star sensor, in this work, we propose a real-time star trailing removal method based on fast blur kernel estimation. First, in order to minimize the influence of noise on parameter estimation, we use principal component analysis (PCA) in the dual-frequency spectrum domain to estimate the angle of blur kernel. In addition, an adjustable weighting method is proposed to estimate the length of blur kernel. So, we are able to quickly estimate the high-precision blur kernel based on a single degraded image. Moreover, an area filtering method based on the hyper-Laplacian prior recovery algorithm is also proposed. This algorithm quickly reconstructs the star points in the tracking windows and effectively removes the star point tailing in real time. The computational efficiency of the proposed algorithm is 5 times superior to the traditional method and 15 times superior to the existing accelerated iterative method. The experimental results show that the proposed algorithm removes the trailing star quickly and effectively, under low SNR. In addition, the proposed method effectively improves the number of extracted star points and the accuracies of star centroids.
机译:星形点的星点数和明星质心的准确性是在高动态条件下影响星传感器性能的关键因素。运动模糊导致星点尾部,因此导致星形质心提取精度的下降,并且在某些情况下导致提取失效。为了提高星传感器的动态性能,在这项工作中,我们提出了一种基于快速模糊内核估计的实时星尾部去除方法。首先,为了最小化噪声对参数估计的影响,我们在双频频谱域中使用主成分分析(PCA)来估计模糊内核的角度。另外,提出了一种可调节的加权方法来估计模糊核的长度。因此,我们能够基于单个降级图像快速估计高精度模糊内核。此外,还提出了一种基于Hyper-Laplacian的现有恢复算法的区域滤波方法。该算法快速重建跟踪窗口中的星点,并有效地将星点拖​​尾实时消除。所提出的算法的计算效率是传统方法优于5次,优于现有的加速迭代方法15次。实验结果表明,该算法在低SNR下快速有效地消除了尾部星星。此外,所提出的方法有效地改善了提取的星点的数量和恒星质心的准确性。

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