Sparsity and Compressed Sensing in Radar Imaging
The Ohio State University · United States Air Force Research Laboratory · +1 more institution
Abstract
Remote sensing with radar is typically an ill-posed linear inverse problem: a scene is to be inferred from limited measurements of scattered electric fields. Parsimonious models provide a compressed representation of the unknown scene and offer a means for regularizing the inversion task. The emerging field of compressed sensing combines nonlinear reconstruction algorithms and pseudorandom linear measurements to provide reconstruction guarantees for sparse solutions to linear inverse problems. This paper surveys the use of sparse reconstruction algorithms and randomized measurement strategies in radar processing. Although the two themes have a long history in radar literature, the accessible framework provided…
Citation impact
- FWCI
- 45.65
- Percentile
- 100%
- References
- 113
Authors
4Topics & keywords
- Compressed sensing
- Inverse problem
- Computer science
- Radar
- Inversion (geology)
- Radar imaging
- Iterative reconstruction
- Basis pursuit
- Sustainable cities and communities