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Please use this identifier to cite or link to this item: http://arks.princeton.edu/ark:/88435/dsp013484zk66c
Title: Evaluation of Scalable Semidefinite Relaxation Against Modern Inference Techniques
Authors: Chen, Alan
Advisors: Chen, Yuxin
Department: Electrical Engineering
Certificate Program: Robotics & Intelligent Systems Program
Class Year: 2018
Abstract: In the 2013 in “A Comparative Study of Modern Inference Techniques for Structured Discrete Energy Minimization Problems”, Kappes et. al”1 provided a modernization to the previous benchmark models and algorithms used by Szeliski et al. In 2014, the paper “Scalable Semidefinite Relaxation for Maximum A Posterior Estimation”2 was published by Huang et. al. Huang et. al “proposed a novel semidefinite relaxation algorithm for second-order MAP inference in pairwise undirected graphical models. For this project, we will compare the semidefinite relaxation algorithm to several of the algorithms available in OpenGM2 as of the 2014 update to “A Comparative Study of Modern Inference Techniques for Structured Discrete Energy Minimization Problems”3.
URI: http://arks.princeton.edu/ark:/88435/dsp013484zk66c
Type of Material: Princeton University Senior Theses
Language: en
Appears in Collections:Electrical Engineering, 1932-2020

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