Compressive sensing of a superposition of pulses
| Title | Compressive sensing of a superposition of pulses |
| Publication Type | Conference Paper |
| Authors | C. 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 Publication | 2010 |
| Month | Mar. |
| Conference Name | International Conference on Acoustics, Speech, and Signal Processing (ICASSP) |
| Conference Location | Dallas, Tx |