DocumentCode
69873
Title
On the Fundamental Limits of Recovering Tree Sparse Vectors From Noisy Linear Measurements
Author
Soni, Archana ; Haupt, Jarvis
Author_Institution
Dept. of Electr. & Comput. Eng., Univ. of Minnesota Twin Cities, Minneapolis, MN, USA
Volume
60
Issue
1
fYear
2014
fDate
Jan. 2014
Firstpage
133
Lastpage
149
Abstract
Recent breakthrough results in compressive sensing (CS) have established that many high dimensional signals can be accurately recovered from a relatively small number of non-adaptive linear observations, provided that the signals possess a sparse representation in some basis. Subsequent efforts have shown that the performance of CS can be improved by exploiting additional structure in the locations of the nonzero signal coefficients during inference or by utilizing some form of data-dependent adaptive measurement focusing during the sensing process. To the best of our knowledge, our own previous work was the first to establish the potential benefits that can be achieved when fusing the notions of adaptive sensing and structured sparsity. In that work, we examined the task of support recovery from noisy linear measurements, and established that an adaptive sensing strategy specifically tailored to signals that are tree-sparse can significantly outperform adaptive and non-adaptive sensing strategies that are agnostic to the underlying structure. In this paper, we establish fundamental performance limits for the task of support recovery of tree-sparse signals from noisy measurements, in settings where measurements may be obtained either non-adaptively (using a randomized Gaussian measurement strategy motivated by initial CS investigations) or by any adaptive sensing strategy. Our main results here imply that the adaptive tree sensing procedure analyzed in our previous work is nearly optimal, in the sense that no other sensing and estimation strategy can perform fundamentally better for identifying the support of tree-sparse signals.
Keywords
Gaussian processes; compressed sensing; CS; Gaussian measurement strategy; adaptive measurement; compressive sensing; fundamental limits; noisy linear measurements; noisy measurements; nonadaptive linear observations; sensing process; signal coefficients; sparse representation; tree sparse signals; tree sparse vectors; Compressed sensing; Data structures; Indexes; Noise; Noise measurement; Sensors; Vectors; Adaptive sensing; compressive sensing; minimax lower bounds; sparse support recovery; structured sparsity; tree sparsity;
fLanguage
English
Journal_Title
Information Theory, IEEE Transactions on
Publisher
ieee
ISSN
0018-9448
Type
jour
DOI
10.1109/TIT.2013.2287496
Filename
6648675
Link To Document