结合融合框架测量稀疏恢复的平均案例分析

P. Boufounos, Gitta Kutyniok, H. Rauhut
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引用次数: 2

摘要

稀疏表示在信号和信息处理中已经成为一种强大的工具,随着压缩感知(CS)等新的采集和处理技术的成功而达到高潮。融合帧是一种非常丰富的新型信号表示方法,它使用子空间集合代替向量来表示信号。这些令人兴奋的领域最近被结合在一起,为聚变框架引入了一个新的稀疏性模型。在新模型下的稀疏信号可以进行压缩采样,并以与使用标准CS的稀疏信号相似的方式进行唯一重构。这种结合提供了一套新的数学工具和信号模型,在各种应用中都很有用。使用新模型,稀疏信号在融合框架的很少子空间中具有能量,尽管它不需要在它所占据的每个子空间内都是稀疏的。在本文中,我们证明了尽管在新模型下的最坏情况下的恢复分析通常是相当悲观的,但平均情况分析并非如此,并且提供了更多的见解。利用稀疏信号的概率模型表明,在非常温和的条件下,恢复失败的概率随子空间维数的增加呈指数衰减。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Average case analysis of sparse recovery from combined fusion frame measurements
Sparse representations have emerged as a powerful tool in signal and information processing, culminated by the success of new acquisition and processing techniques such as Compressed Sensing (CS). Fusion frames are very rich new signal representation methods that use collections of subspaces instead of vectors to represent signals. These exciting fields have been recently combined to introduce a new sparsity model for fusion frames. Signals that are sparse under the new model can be compressively sampled and uniquely reconstructed in ways similar to sparse signals using standard CS. The combination provides a promising new set of mathematical tools and signal models useful in a variety of applications. With the new model, a sparse signal has energy in very few of the subspaces of the fusion frame, although it does not need to be sparse within each of the subspaces it occupies. In this paper we demonstrate that although a worst-case analysis of recovery under the new model can often be quite pessimistic, an average case analysis is not and provides significantly more insight. Using a probability model on the sparse signal we show that under very mild conditions the probability of recovery failure decays exponentially with increasing dimension of the subspaces.
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