A Probabilistic and RIPless Theory of Compressed Sensing
Stanford University · California Institute of Technology
Abstract
This paper introduces a simple and very general theory of compressive sensing. In this theory, the sensing mechanism simply selects sensing vectors independently at random from a probability distribution F ; it includes all standard models-e.g., Gaussian, frequency measurements-discussed in the literature, but also provides a framework for new measurement strategies as well. We prove that if the probability distribution F obeys a simple incoherence property and an isotropy property, one can faithfully recover approximately sparse signals from a minimal number of noisy measurements. The novelty is that our recovery results do not require the restricted isometry property (RIP) to hold near the sparsity level in…
Citation impact
- FWCI
- 57.40
- Percentile
- 100%
- References
- 66
Authors
2Topics & keywords
- Compressed sensing
- Computer science
- Gaussian
- Probability distribution
- Probabilistic logic
- Algorithm
- Simple (philosophy)
- Artificial intelligence