资源论文Pseudoconvex Proximal Splitting for L∞ Problems in Multiview Geometry

Pseudoconvex Proximal Splitting for L∞ Problems in Multiview Geometry

2019-12-11 | |  76 |   46 |   0

Abstract

In this paper we study optimization methods for minimizing large-scale pseudoconvex Lproblems in multiview geometry. We present a novel algorithm for solving this class of problem based on proximal splitting methods. We provide a brief derivation of the proposed method along with a general convergence analysis. The resulting meta-algorithm requires very little effort in terms of implementation and instead makes use of existing advanced solvers for non-linear optimization. Preliminary experiments on a number of real image datasets indicate that the proposed method experimentally matches or outperforms current state-of-the-art solvers for this class of problems.

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