Compressive Sensing of Streams of Pulses
Submitted by fk4 on Fri, 11/06/2009 - 00:35
| Title | Compressive Sensing of Streams of Pulses |
| Publication Type | Conference Paper |
| Authors | C. Hegde, and R. G. Baraniuk |
| Abstract | Compressive Sensing (CS) has developed as an enticing alternative to the traditional process of signal acquisition. For a length-N signal with sparsity K, merely M = O(K logN) ≪ N random linear projections (measurements) can be used for robust reconstruction in polynomial time. Sparsity is a powerful and simple signal model; yet, richer models that impose additional structure on the sparse nonzeros of a signal have been studied theoretically and empirically from the CS perspective.
In this work, we introduce and study a sparse signal model for streams of pulses, i.e., S-sparse signals convolved with an unknown F-sparse impulse response. Our contributions are threefold: (i) we geometrically model this set of signals as an infinite union of subspaces; (ii) we derive a sufficient number of random measurements M required to preserve the metric information of this set. In particular this number is linear merely in the number of degrees of freedom of the signal S + F, and sublinear in the sparsity K = SF; (iii) we develop an algorithm that performs recovery of the signal from Mmeasurements and analyze its performance under noise and model mismatch. Numerical experiments on synthetic and real data demonstrate the utility of our proposed theory and algorithm. Our method is amenable to diverse applications such as the highresolution sampling of neuronal recordings and ultrawideband (UWB) signals.
|
| Year of Publication | 2009 |
| Month | Sep. |
| Conference Name | Allerton Conference on Communication, Control, and Computing |