基于目标数据库的多视点视频序列压缩感知恢复

Yong You, B. Liu, Chang Wen Chen
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引用次数: 0

摘要

压缩感知(CS)是一种能够以亚奈奎斯特速率进行信号重构的技术,在多视点视频序列的快速重构中得到了广泛的应用。在本文中,我们提出了利用结构群稀疏表示(SGSR)模型和目标数据库的MVS压缩感知恢复。SGSR将相似的patch分组在一起,并从相似组中学习自适应基,得到更稀疏的表示,从而在CS恢复中表现更好。由于MVS具有丰富的先验信息,因此可以很容易地获得目标数据库,并且该数据库可以帮助我们获得更准确的相似补丁,从而进一步提高SGSR的性能。考虑到图像是可压缩信号而不是稀疏信号,我们设计了一种保留图像细节的滤波方法。仿真结果表明,该算法优于现有的重构算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Compressed sensing recovery of multi-view video sequences by targeted database
Compressed sensing (CS) is a technique that enables signal reconstruction at sub-Nyquist rate and has been widely used for fast reconstruction of multi-view video sequences (MVS) in the surveillance application. In this paper, we propose compressed-sensing recovery of MVS exploiting the model of structural group sparse representation (SGSR) along with a targeted database. SGSR groups similar patches together coupled with learning the adaptive basis from the similar groups, which gets sparser representation and thereby performs better in CS recovery. A targeted database can be easily obtained from the MVS due to their abundant prior information and the database can help us obtain more accurate similar patches, which further improve the performance with SGSR. Considering images as compressible signals rather than sparse signals, we design a filtering to retain the details of images. Simulation results show that the proposed algorithm outperforms existing reconstruction algorithms.
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