资源论文Unifying Holistic and Parts-Based Deformable Model Fitting

Unifying Holistic and Parts-Based Deformable Model Fitting

2019-12-25 | |  63 |   39 |   0

Abstract

The construction and fitting of deformable models that capture the degrees of freedom of articulated objects is one of the most popular areas of research in computer vi-sion. Two of the most popular approaches are: Holistic Deformable Models (HDMs), which try to represent the objectas a whole, and Parts-Based Deformable Models (PBDMs), which model object parts independently. Both models have been shown to have their own advantages. In this paper we try to marry the previous two approaches into a unified one that potentially combines the advantages of both. We do so by merging the well-established frameworks of Active Appearance Models (holistic) and Constrained Local Models (part-based) using a novel probabilistic formulation of the fitting problem. We show that our unified holistic and part-based formulation achieves state-of-the-art results in the problem of face alignment in-the-wild. Finally, in order to encourage open research and facilitate future comparisons with the proposed method, our code will be made publicly available to the research community1 .

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