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首页> 外文期刊>Journal of visual communication & image representation >Predicted multi-variable intelligent matching pursuit algorithm for image sequences reconstruction based on l(0) minimization
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Predicted multi-variable intelligent matching pursuit algorithm for image sequences reconstruction based on l(0) minimization

机译:基于l(0)最小化的图像序列预测多变量智能匹配追踪算法

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摘要

In this paper, we study the problem of reconstructing image sequences which satisfy the conditions that (a) the sparsity level is high in the wavelet domain and (b) the sparsity pattern of adjacent images changes very slowly. The idea of the proposed method predicted multi-variable intelligent matching pursuit (PMIMP) algorithm is to use the estimated support collection of the previous image as prior information and then utilize the prior information to guide the current image reconstruction by solving 10 minimization. Multi-variable scheme is used to sample image sequences to enhance the guidance of prior information and improve the reconstruction accuracy with fewer measurements. to minimization is an NP-hard problem that requires exhaustively listing all possibilities of the original signal and is difficult to be achieved by traditional algorithms. To solve it, we take advantage of the intelligent optimization algorithm which is famous for its global searching ability and superior performance in solving combinatorial optimization problems. To improve the reconstruction speed, matching strategies of greedy algorithm, which performs quite well in reconstruction speed, are utilized to design the updating mechanism of PMIMP. As the sparsity level is hard to be estimated in image sequences reconstruction, we propose a novel optimization function which does not need the sparsity level known as a prior. We illustrate the reconstruction performance of our proposed method PMIMP on several image sequences and compare it with the state-of-the-art algorithms. The experimental results demonstrate that PMIMP achieves the best reconstruction performance in both PSNR, SSIM and visual quality with fewer measurements. (C) 2016 Elsevier Inc. All rights reserved.
机译:在本文中,我们研究了满足以下条件的图像序列重建问题:(a)小波域的稀疏度较高,(b)相邻图像的稀疏度模式变化非常缓慢。所提出的方法预测多变量智能匹配追踪(PMIMP)算法的思想是使用先前图像的估计支持集作为先验信息,然后利用先验信息通过解决10个最小化来指导当前图像重建。多变量方案用于对图像序列进行采样,以增强先验信息的指导并以更少的测量值来提高重建精度。最小化是一个NP难题,需要详尽列出原始信号的所有可能性,并且很难通过传统算法来实现。为了解决这个问题,我们利用了以其全局搜索能力和解决组合优化问题的卓越性能而著称的智能优化算法。为了提高重建速度,利用贪婪算法在重建速度上表现良好的匹配策略来设计PMIMP的更新机制。由于在图像序列重建中很难估计稀疏度,因此我们提出了一种新颖的优化函数,该函数不需要稀疏度就称为先验。我们说明了我们提出的方法PMIMP在多个图像序列上的重建性能,并将其与最新算法进行了比较。实验结果表明,PMIMP在PSNR,SSIM和视觉质量方面都达到了最佳的重建性能,并且测量次数更少。 (C)2016 Elsevier Inc.保留所有权利。

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