Complexity of Discrete Energy Minimization Problems

07/29/2016
by   Mengtian Li, et al.
0

Discrete energy minimization is widely-used in computer vision and machine learning for problems such as MAP inference in graphical models. The problem, in general, is notoriously intractable, and finding the global optimal solution is known to be NP-hard. However, is it possible to approximate this problem with a reasonable ratio bound on the solution quality in polynomial time? We show in this paper that the answer is no. Specifically, we show that general energy minimization, even in the 2-label pairwise case, and planar energy minimization with three or more labels are exp-APX-complete. This finding rules out the existence of any approximation algorithm with a sub-exponential approximation ratio in the input size for these two problems, including constant factor approximations. Moreover, we collect and review the computational complexity of several subclass problems and arrange them on a complexity scale consisting of three major complexity classes -- PO, APX, and exp-APX, corresponding to problems that are solvable, approximable, and inapproximable in polynomial time. Problems in the first two complexity classes can serve as alternative tractable formulations to the inapproximable ones. This paper can help vision researchers to select an appropriate model for an application or guide them in designing new algorithms.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/11/2017

Guaranteed Parameter Estimation for Discrete Energy Minimization

Structural learning, a method to estimate the parameters for discrete en...
research
08/31/2015

Maximum Persistency via Iterative Relaxed Inference with Graphical Models

We consider the NP-hard problem of MAP-inference for undirected discrete...
research
07/30/2013

Efficient Energy Minimization for Enforcing Statistics

Energy minimization algorithms, such as graph cuts, enable the computati...
research
10/27/2012

Discrete Energy Minimization, beyond Submodularity: Applications and Approximations

In this thesis I explore challenging discrete energy minimization proble...
research
09/19/2019

Structured Discrete Shape Approximation: Theoretical Complexity and Practical Algorithm

We consider the problem of approximating a two-dimensional shape contour...
research
12/27/2019

Worst-Case Polynomial-Time Exact MAP Inference on Discrete Models with Global Dependencies

Considering the worst-case scenario, junction tree algorithm remains the...
research
12/31/2012

Bethe Bounds and Approximating the Global Optimum

Inference in general Markov random fields (MRFs) is NP-hard, though iden...

Please sign up or login with your details

Forgot password? Click here to reset