Sampling and Recovery of Pulse Streams
Chinmay Hegde, Richard G. Baraniuk

TL;DR
This paper extends compressive sensing to pulse stream signals, proposing a new model, deriving measurement bounds, and developing an efficient recovery algorithm that outperforms standard CS methods.
Contribution
It introduces a pulse stream signal model as an infinite union of subspaces, derives a measurement bound linear in degrees of freedom, and presents a novel recovery algorithm.
Findings
The measurement bound is linear in S + F, much smaller than naive bounds.
The proposed algorithm accurately recovers pulse shapes and locations.
Numerical experiments show improved performance over standard CS methods.
Abstract
Compressive Sensing (CS) is a new technique for the efficient acquisition of signals, images, and other data that have a sparse representation in some basis, frame, or dictionary. By sparse we mean that the N-dimensional basis representation has just K<<N significant coefficients; in this case, the CS theory maintains that just M = K log N random linear signal measurements will both preserve all of the signal information and enable robust signal reconstruction in polynomial time. In this paper, we extend the CS theory to pulse stream data, which correspond to S-sparse signals/images that are convolved with an unknown F-sparse pulse shape. Ignoring their convolutional structure, a pulse stream signal is K=SF sparse. Such signals figure prominently in a number of applications, from neuroscience to astronomy. Our specific contributions are threefold. First, we propose a pulse stream signal…
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