DocumentCode :
1728008
Title :
Recovering simple signals
Author :
Gilbert, Anna C. ; Hemenway, Brett ; Rudra, Atri ; Strauss, Martin J. ; Wootters, Mary
Author_Institution :
Dept. of Math., Univ. of Michigan, Ann Arbor, MI, USA
fYear :
2012
Firstpage :
382
Lastpage :
391
Abstract :
The primary goal of compressed sensing and (non-adaptive) combinatorial group testing is to recover a sparse vector x from an underdetermined set of linear equations Φx = y. Both problems entail solving Φx = y given Φ and y but they use different models of arithmetic, different models of randomness models for F, and different guarantees upon the solution x and the class of signals from which x is drawn. In [1], Lipton introduced a model for error correction where the channel is computationally bounded, subject to standard cryptographic assumptions, and produces the error vector x that must be found and then corrected. This has been extended in [2], [3] to create more efficient schemes against polynomial and logspace bounded channels. Inspired by these results in error correction, we view compressed sensing and combinatorial group testing as an adversarial process, where Mallory the adversary produces the vector x to be measured, with limited information about the matrix Φ. We define a number of computationally bounded models for Mallory and show that there are significant gains (in the minimum number of measurements) to be had by relaxing the model from adversarial to computationally or information-theoretically bounded, and not too much (in some cases, nothing at all) is lost by assuming these models over oblivious or statistical models. We also show that differences in adversarial power give rise to different lower bounds for the number of measurements required to defeat such an adversary. By contrast we show that randomized one pass log space streaming Mallory is almost as powerful as a fully adversarial one for group testing while for compressed sensing such an adversary is as weak as an oblivious one.
Keywords :
compressed sensing; cryptography; error correction; sparse matrices; combinatorial group testing; compressed sensing; computationally bounded models; cryptographic assumptions; error correction; information theoretically bounded; linear equations; logspace bounded channels; polynomial bounded channels; sparse vector; Compressed sensing; Computational modeling; Electronic mail; Mathematical model; Probabilistic logic; Testing; Vectors;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Information Theory and Applications Workshop (ITA), 2012
Conference_Location :
San Diego, CA
Print_ISBN :
978-1-4673-1473-2
Type :
conf
DOI :
10.1109/ITA.2012.6181772
Filename :
6181772
Link To Document :
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