A simple proof that random matrices are democratic
| Title | A simple proof that random matrices are democratic |
| Publication Type | Report |
| Authors | M. A. Davenport, J. N. Laska, P. T. Boufounos, and R. G. Baraniuk |
| Abstract | The recently introduced theory of compressive sensing (CS) enables the reconstruction of sparse or compressible signals from a small set of nonadaptive, linear measurements. If properly chosen, the number of measurements can be significantly smaller than the ambient dimension of the signal and yet preserve the significant signal information. Interestingly, it can be shown that random measurement schemes provide a near-optimal encoding in terms of the required number of measurements. In this report, we explore another relatively unexplored, though often alluded to, advantage of using random matrices to acquire CS measurements. Specifically, we show that random matrices are democractic, meaning that each measurement carries roughly the same amount of signal information. We demonstrate that by slightly increasing the number of measurements, the system is robust to the loss of a small number of arbitrary measurements. In addition, we draw connections to oversampling and demonstrate stability from the loss of significantly more measurements. |
| Year of Publication | 2009 |
| Month | Nov. |
| Technical Report Number | TREE 0906 |
| Institution | Rice University, Department of Electrical and Computer Engineering |
| URL | http://arxiv.org/PS_cache/arxiv/pdf/0911/0911.0736v1.pdf |
| Acknowledgements | This work was supported by the grants NSF CCF-0431150, CCF-0728867, CNS-0435425, and CNS-0520280, DARPA/ONR N66001-08-1-2065, ONR N00014-07-1-0936, N00014-08-1-1067, N00014-08-1-1112, and N00014-08-1-1066, AFOSR FA9550-07-1-0301, ARO MURI W311NF-07-1-0185, and the Texas Instruments Leadership University Program. |