A General Framework for Reconstruction and Classification from Compressive Measurements with Side Information

Francesco Renna1, Lawrence Carin2, Liming Wang2, Miguel R. D. Rodrigues1, Robert Calderbank2, Xin Yuan3

  • 1University College London
  • 2Duke University
  • 3Bell Labs, Alcatel-Lucent

Details

13:30 - 15:30 | Tue 22 Mar | Poster Area F | SPTM-P1.1

Session: Detection

Abstract

We develop a general framework for compressive linear-projection measurements with side information. Side information is an additional signal correlated with the signal of interest. We investigate the impact of side information on classification and signal recovery from low-dimensional measurements. Motivated by real applications, two special cases of the general model are studied. In the first, a joint Gaussian mixture model is manifested on the signal and side information. The second example again employs a Gaussian mixture model for the signal, with side information drawn from a mixture in the exponential family. Theoretical results on recovery and classification accuracy are derived. The presence of side information is shown to yield improved performance, both theoretically and experimentally.