Precise Phase Transition of Total Variation Minimization

09/15/2015
by   Bingwen Zhang, et al.
0

Characterizing the phase transitions of convex optimizations in recovering structured signals or data is of central importance in compressed sensing, machine learning and statistics. The phase transitions of many convex optimization signal recovery methods such as ℓ_1 minimization and nuclear norm minimization are well understood through recent years' research. However, rigorously characterizing the phase transition of total variation (TV) minimization in recovering sparse-gradient signal is still open. In this paper, we fully characterize the phase transition curve of the TV minimization. Our proof builds on Donoho, Johnstone and Montanari's conjectured phase transition curve for the TV approximate message passing algorithm (AMP), together with the linkage between the minmax Mean Square Error of a denoising problem and the high-dimensional convex geometry for TV minimization.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/08/2018

Sample Complexity of Total Variation Minimization

This work considers the use of Total variation (TV) minimization in the ...
research
01/28/2013

Guarantees of Total Variation Minimization for Signal Recovery

In this paper, we consider using total variation minimization to recover...
research
01/15/2018

A Tight Converse to the Spectral Resolution Limit via Convex Programming

It is now well understood that convex programming can be used to estimat...
research
09/08/2019

Living near the edge: A lower-bound on the phase transition of total variation minimization

This work is about the total variation (TV) minimization which is used f...
research
07/17/2013

Universally Elevating the Phase Transition Performance of Compressed Sensing: Non-Isometric Matrices are Not Necessarily Bad Matrices

In compressed sensing problems, ℓ_1 minimization or Basis Pursuit was kn...
research
06/27/2018

On the Error in Phase Transition Computations for Compressed Sensing

Evaluating the statistical dimension is a common tool to determine the a...
research
07/14/2018

Sparse Relaxed Regularized Regression: SR3

Regularized regression problems are ubiquitous in statistical modeling, ...

Please sign up or login with your details

Forgot password? Click here to reset