Recovering Jointly Sparse Signals via Joint Basis Pursuit
Abstract
This work considers recovery of signals that are sparse over two bases. For instance, a signal might be sparse in both time and frequency, or a matrix can be low rank and sparse simultaneously. To facilitate recovery, we consider minimizing the sum of the 1-norms that correspond to each basis, which is a tractable convex approach. We find novel optimality conditions which indicates a gain over traditional approaches where 1 minimization is done over only one basis. Next, we analyze these optimality conditions for the particular case of time-frequency bases. Denoting sparsity in the first and second bases by k1,k2 respectively, we show that, for a general class of signals, using this approach, one requires as small as O(\k1,k2\ n) measurements for successful recovery hence overcoming the classical requirement of (\k1,k2\(n\k1,k2\)) for 1 minimization when k1≈ k2. Extensive simulations show that, our analysis is approximately tight.