Joint estimation of offset parameters and high-resolution images via l1-norm minimization principle

A. Hirabayashi
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Abstract

We propose a joint estimation algorithm of offset parameters and a high resolution image from a set of multiple low resolution images based on the l1-norm minimization principle. Advantages of the joint approach include that, since it uses low-resolution images in a batch manner, we are less suffered from aliasing effects. The l1-norm minimization principle is effective because we assume sparsity on underlying high-resolution images. The proposed algorithm first minimizes the l1-norm of a vector that satisfies data constraint with the offset parameters fixed. Then, the minimum value is further minimized with respect to the parameters. Even though this is a heuristic approach, the computer simulations show that the proposed algorithm perfectly reconstructs sparse images with a probability more than or equal to 99% for large dimensional images. The proposed approach is attractive because of its computational efficiency.
基于11范数最小化原理的偏移参数与高分辨率图像的联合估计
提出了一种基于11范数最小化原理的多幅低分辨率图像偏移参数和高分辨率图像的联合估计算法。联合方法的优点包括,由于它以批处理方式使用低分辨率图像,我们较少受到混叠影响。11范数最小化原则是有效的,因为我们假设底层高分辨率图像是稀疏的。该算法首先在保证偏移量参数不变的情况下最小化满足数据约束的向量的l1范数。然后,将最小值相对于参数进一步最小化。尽管这是一种启发式方法,但计算机模拟表明,对于大维图像,所提出的算法可以以大于或等于99%的概率完美地重建稀疏图像。该方法计算效率高,具有一定的吸引力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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