Compressive sensing of a superposition of pulses

TitleCompressive sensing of a superposition of pulses
Publication TypeConference Paper
AuthorsC. Hegde, and R. G. Baraniuk
Abstract

Compressive Sensing (CS) has emerged as a potentially viable tech- nique for the efficient acquisition of high-resolution signals and im- ages that have a sparse representation in a fixed basis. The number of linear measurements M required for robust polynomial time recovery of S-sparse signals of length N can be shown to be proportional to S log N . However, in many real-life imaging applications, the original S-sparse image may be blurred by an unknown point spread function defined over a domain Ω; this multiplies the apparent sparsity of the image, as well as the corresponding acquisition cost, by a factor of |Ω|. In this paper, we propose a new CS recovery algorithm for such images that can be modeled as a sparse superposition of pulses. Our method can be used to infer both the shape of the two- dimensional pulse and the locations and amplitudes of the pulses. Our main theoretical result shows that our reconstruction method re- quires merely M = O(S + |Ω|) linear measurements, so that M is sublinear in the overall image sparsity S|Ω|. Experiments with real world data demonstrate that our method provides considerable gains over standard state-of-the-art compressive sensing techniques in terms of numbers of measurements required for stable recovery.

Year of Publication2010
MonthMar.
Conference NameInternational Conference on Acoustics, Speech, and Signal Processing (ICASSP)
Conference LocationDallas, Tx
Publication File: 

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