This paper provides a sharp analysis of the optimally tuned denoising problem and establishes a relation between the estimation error (minimax risk) and phase transition for compressed sensing recovery using convex and continuous functions. Phase transitions deal with recovering a signal xo from compressed linear observations Ax_0 by minimizing a certain convex function f(·). On the other hand, denoising is the problem of estimating a signal x_0 from noisy observations y = x_0+z using the regularization min_x λ/f(x) + 1/2∥y-x∥_2^2. In general, these problems are more meaningful and useful when the signal x_0 has a certain structure and the function f(·) is chosen to exploit this structure. Examples include, l_1 and l_1 - l_2 norms for spars...
Recovery of the sparsity pattern (or support) of an unknown sparse vector from a limited number of n...
In sparse signal recovery of compressive sensing, the phase transition determines the edge, which se...
Abstract—Compressed sensing is designed to measure sparse signals directly in a compressed form. How...
This paper provides a sharp analysis of the optimally tuned denoising problem and establishes a rela...
We consider the denoising problem where we wish to estimate a structured signal x0 from corrupted ob...
Compressed sensing deals with efficient recovery of analog signals from linear encodings. This paper...
Abstract—Compressed sensing deals with efficient recovery of analog signals from linear encodings. T...
Abstract—Compressed sensing deals with efficient recovery of analog signals from linear encodings. T...
This short note studies a variation of the compressed sensing paradigm introduced recently by Vaswan...
Consider the noisy underdetermined system of linear equations: y = Ax0 + z0, with n × N measurement ...
Reconstruction fidelity of sparse signals contaminated by sparse noise is considered. Statistical me...
Let X0 be an unknown M by N matrix. In matrix recovery, one takes n < MN linear measurements y1,....
Models or signals exhibiting low dimensional behavior (e.g., sparse signals, low rank matrices) play...
Compressed sensing is a technique for recovering an unknown sparse signal from a small number of lin...
Abstract — Models or signals exhibiting low dimensional behavior (e.g., sparse signals, low rank mat...
Recovery of the sparsity pattern (or support) of an unknown sparse vector from a limited number of n...
In sparse signal recovery of compressive sensing, the phase transition determines the edge, which se...
Abstract—Compressed sensing is designed to measure sparse signals directly in a compressed form. How...
This paper provides a sharp analysis of the optimally tuned denoising problem and establishes a rela...
We consider the denoising problem where we wish to estimate a structured signal x0 from corrupted ob...
Compressed sensing deals with efficient recovery of analog signals from linear encodings. This paper...
Abstract—Compressed sensing deals with efficient recovery of analog signals from linear encodings. T...
Abstract—Compressed sensing deals with efficient recovery of analog signals from linear encodings. T...
This short note studies a variation of the compressed sensing paradigm introduced recently by Vaswan...
Consider the noisy underdetermined system of linear equations: y = Ax0 + z0, with n × N measurement ...
Reconstruction fidelity of sparse signals contaminated by sparse noise is considered. Statistical me...
Let X0 be an unknown M by N matrix. In matrix recovery, one takes n < MN linear measurements y1,....
Models or signals exhibiting low dimensional behavior (e.g., sparse signals, low rank matrices) play...
Compressed sensing is a technique for recovering an unknown sparse signal from a small number of lin...
Abstract — Models or signals exhibiting low dimensional behavior (e.g., sparse signals, low rank mat...
Recovery of the sparsity pattern (or support) of an unknown sparse vector from a limited number of n...
In sparse signal recovery of compressive sensing, the phase transition determines the edge, which se...
Abstract—Compressed sensing is designed to measure sparse signals directly in a compressed form. How...