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Published 2007 | Published
Book Section - Chapter Open

Further Results on Performance Analysis for Compressive Sensing Using Expander Graphs

Abstract

Compressive sensing is an emerging technology which can recover a sparse signal vector of dimension n via a much smaller number of measurements than n. In this paper, we will give further results on the performance bounds of compressive sensing. We consider the newly proposed expander graph based compressive sensing schemes and show that, similar to the l_1 minimization case, we can exactly recover any k-sparse signal using only O(k log(n)) measurements, where k is the number of nonzero elements. The number of computational iterations is of order O(k log(n)), while each iteration involves very simple computational steps.

Additional Information

© 2007 IEEE. Issue Date: 4-7 Nov. 2007; Date of Current Version: 11 April 2008.

Attached Files

Published - Xu2007p8713Conference_Record_Of_The_Forty-First_Asilomar_Conference_On_Signals_Systems___Computers_Vols_1-5.pdf

Files

Xu2007p8713Conference_Record_Of_The_Forty-First_Asilomar_Conference_On_Signals_Systems___Computers_Vols_1-5.pdf

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Created:
August 19, 2023
Modified:
March 5, 2024