English

On the modified Basis Pursuit reconstruction for Compressed Sensing with partially known support

Statistics Theory 2015-09-07 v3 Optimization and Control Methodology Statistics Theory

Abstract

The goal of this short note is to present a refined analysis of the modified Basis Pursuit (1\ell_1-minimization) approach to signal recovery in Compressed Sensing with partially known support, as introduced by Vaswani and Lu. The problem is to recover a signal xRpx \in \mathbb R^p using an observation vector y=Axy=Ax, where ARn×pA \in \mathbb R^{n\times p} and in the highly underdetermined setting npn\ll p. Based on an initial and possibly erroneous guess TT of the signal's support supp(x){\rm supp}(x), the Modified Basis Pursuit method of Vaswani and Lu consists of minimizing the 1\ell_1 norm of the estimate over the indices indexed by TcT^c only. We prove exact recovery essentially under a Restricted Isometry Property assumption of order 2 times the cardinal of Tcsupp(x)T^c \cap {\rm supp}(x), i.e. the number of missed components.

Cite

@article{arxiv.0906.0593,
  title  = {On the modified Basis Pursuit reconstruction for Compressed Sensing with partially known support},
  author = {Stephane Chretien},
  journal= {arXiv preprint arXiv:0906.0593},
  year   = {2015}
}

Comments

Withdrawn due to an error in the proof. A new version will be submitted as a section in a future paper

R2 v1 2026-06-21T13:08:59.422Z