天文图像的顺序图像配准

S. Shahhosseini, B. Rezaie, V. Emamian
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引用次数: 3

摘要

天文图像具有平滑、信噪比低、对平台运动非常敏感等特点。由于信噪比较低,需要收集大量帧并考虑平均。然而,序列中经常出现未注册的帧。基于特征的帧配准方法由于对比度低而失败。此外,基于区域的方法,如模板匹配和相位相关方法,虽然准确,但由于序列中图像帧的大小和数量大,导致计算效率低下。本文提出了一种新的两阶段算法来加速配准过程。第一阶段将运动方向投影为一组平行条纹,并使用线性霍夫变换确定运动角度。下一阶段仅在估计方向上使用归一化相互关系来找到位移的确切量。实验结果已制成表格,以说明所提出的算法对相位相关的优越计算效率,以及在存在噪声的情况下该过程的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sequential Image Registration for Astronomical Images
Astronomical images are characterized by their smooth features, low level of Signal to Noise Ratio (SNR), and their extreme sensitivity to the motion of platform. Due to the low SNR, it is necessary to collect a large number of frames and consider the average. However, it is a common occurrence to have unregistered frames in the sequence. Frame registration using feature-based approach fails due to low contrast. Also, area-based approaches such as template matching and phase correlation methods, although accurate, suffer from computational inefficiency as a result of the large size and number of image frames in a sequence. This paper introduces a novel two-stage algorithm to accelerate the process of registration. The first stage projects the direction of movement as a cluster of parallel streaks and determines the angle of motion, using Linear Hough Transform. The next stage utilizes Normalized Cross Correlation only in the estimated direction to find the exact amount of displacement. Experimental results have been tabulated to illustrate superior computational efficiency of the proposed algorithm versus phase correlation, as well as robustness of the procedure in the presence of the noise.
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