压缩视频采样的结构化稀疏子空间学习

Yong Li, Wenrui Dai, H. Xiong
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引用次数: 2

摘要

现有的具有子空间学习的稀疏表示受到基的子空间相交的阻碍。利用结构化稀疏性,利用信号统计的先验知识,提出了一种基于子空间学习的压缩视频采样方法,以最小化子空间的交集。作为测量,用正则化学习优化块相干性,生成与子空间相关联的一类独立基。因此,该框架可以基于派生基进行紧凑的块稀疏表示,具有高效和自适应的特点。在块受限等距特性(RIP)约束下,证明了基于块的视频序列恢复是稳定的。实验结果表明,该方法优于现有的压缩视频采样方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Subspace Learning with Structured Sparsity for Compressive Video Sampling
Existing sparse representation with subspace learning is hampered by the intersection of subspaces of bases. With structured sparsity to enable the prior knowledge of signal statistics, this paper proposes a novel compressive video sampling by subspace learning to minimize the intersection of subspaces. As the measurement, the block coherence is optimized with the regularized learning to generate a class of independent bases associated with the subspaces. Thus, the proposed framework can make a compact block sparse representation based on the derived basis in an efficient and adaptive manner. The block-based recovery of video sequences is demonstrated to be stable under the constraint of block restricted isometric property (RIP). Experimental results show that the proposed method outperforms existing compressive video sampling schemes.
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