Sample Complexity of Total Variation Minimization

03/08/2018
by   Sajad Daei, et al.
0

This work considers the use of Total variation (TV) minimization in the recovery of a given gradient sparse vector from Gaussian linear measurements. It has been shown in recent studies that there exist a sharp phase transition behavior in TV minimization in asymptotic regimes. The phase transition curve specifies the boundary of success and failure of TV minimization for large number of measurements. It is a challenging task to obtain a theoretical bound that reflects this curve. In this work, we present a novel upper-bound that suitably approximates this curve and is asymptotically sharp. Numerical results show that our bound is closer to the empirical TV phase transition curve than the previously known bound obtained by Kabanava.

READ FULL TEXT

page 1

page 2

page 3

page 4

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
09/15/2015

Precise Phase Transition of Total Variation Minimization

Characterizing the phase transitions of convex optimizations in recoveri...
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
09/07/2020

Compressed Sensing with 1D Total Variation: Breaking Sample Complexity Barriers via Non-Uniform Recovery (iTWIST'20)

This paper investigates total variation minimization in one spatial dime...
research
03/20/2019

Phase transition in random contingency tables with non-uniform margins

For parameters n,δ,B, and C, let X=(X_kℓ) be the random uniform continge...
research
07/05/2018

Frame-constrained Total Variation Regularization for White Noise Regression

Despite the popularity and practical success of total variation (TV) reg...
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...

Please sign up or login with your details

Forgot password? Click here to reset