In this paper, we introduce the q-ratio block constrained minimal singular values (BCMSV) as a new measure of measurement matrix in compressive sensing of block sparse/compressive signals and present an algorithm for computing this new measure. Both the mixed ℓ2/ℓq and the mixed ℓ2/ℓ1 norms of the reconstruction errors for stable and robust recovery using block basis pursuit (BBP), the block Dantzig selector (BDS), and the group lasso in terms of the q-ratio BCMSV are investigated. We establish a sufficient condition based on the q-ratio block sparsity for the exact recovery from the noise-free BBP and developed a convex-concave procedure to solve the corresponding non-convex problem in the condition. Furthermore, we prove that for sub-Gaus...
This work was also published as a Rice University thesis/dissertation: http://hdl.handle.net/1911/2...
International audienceWe propose novel necessary and sufficient conditions for a sensing matrix to b...
In compressed sensing, to recover a sparse signal or nearly sparse signal from noisy measurements,\u...
In this paper, we introduce the q-ratio block constrained minimal singular values (BCMSV) as a new m...
In this paper, we use the block orthogonal matching pursuit (BOMP) algorithm to recover block sparse...
We discuss new methods for the recovery of signals with block-sparse structure, based on `1-minimiza...
We present a probabilistic analysis on conditions of the exact recovery of block-sparse signals whos...
International audienceWe introduce a general framework to handle structured models (sparse and block...
Abstract This paper focuses on the sufficient condition of block sparse recovery with the l 2 / l 1 ...
Sparse signal representations have gained wide popularity in recent years. In many applications the ...
We consider the problems of detection and support recovery of a contiguous block of weak activation ...
This note discusses the recovery of signals from undersampled data in the situation that such signal...
Abstract — Lower dimensional signal representation schemes frequently assume that the signal of inte...
Recall the setup in compressive sensing. There is an unknown signal z ∈ Rn, and we can only glean in...
In this paper, we study the problem of recovering a group sparse vector from a small number of linea...
This work was also published as a Rice University thesis/dissertation: http://hdl.handle.net/1911/2...
International audienceWe propose novel necessary and sufficient conditions for a sensing matrix to b...
In compressed sensing, to recover a sparse signal or nearly sparse signal from noisy measurements,\u...
In this paper, we introduce the q-ratio block constrained minimal singular values (BCMSV) as a new m...
In this paper, we use the block orthogonal matching pursuit (BOMP) algorithm to recover block sparse...
We discuss new methods for the recovery of signals with block-sparse structure, based on `1-minimiza...
We present a probabilistic analysis on conditions of the exact recovery of block-sparse signals whos...
International audienceWe introduce a general framework to handle structured models (sparse and block...
Abstract This paper focuses on the sufficient condition of block sparse recovery with the l 2 / l 1 ...
Sparse signal representations have gained wide popularity in recent years. In many applications the ...
We consider the problems of detection and support recovery of a contiguous block of weak activation ...
This note discusses the recovery of signals from undersampled data in the situation that such signal...
Abstract — Lower dimensional signal representation schemes frequently assume that the signal of inte...
Recall the setup in compressive sensing. There is an unknown signal z ∈ Rn, and we can only glean in...
In this paper, we study the problem of recovering a group sparse vector from a small number of linea...
This work was also published as a Rice University thesis/dissertation: http://hdl.handle.net/1911/2...
International audienceWe propose novel necessary and sufficient conditions for a sensing matrix to b...
In compressed sensing, to recover a sparse signal or nearly sparse signal from noisy measurements,\u...