Homeomorphic Manifold Analysis (HMA): Generalized separation of style and content on manifolds

作者:

Highlights:

摘要

The problem of separation of style and content is an essential element of visual perception, and is a fundamental mystery of perception. This problem appears extensively in different computer vision applications. The problem we address in this paper is the separation of style and content when the content lies on a low-dimensional nonlinear manifold representing a dynamic object. We show that such a setting appears in many human motion analysis problems. We introduce a framework for learning parameterization of style and content in such settings. Given a set of topologically equivalent manifolds, the Homeomorphic Manifold Analysis (HMA) framework models the variation in their geometries in the space of functions that maps between a topologically-equivalent common representation and each of them. The framework is based on decomposing the style parameters in the space of nonlinear functions that map between a unified embedded representation of the content manifold and style-dependent visual observations. We show the application of the framework in synthesis, recognition, and tracking of certain human motions that follow this setting, such as gait and facial expressions.

论文关键词:Style and content,Manifold embedding,Kernel methods,Human Motion Analysis,Gait analysis,Facial expression analysis

论文评审过程:Received 9 April 2012, Revised 28 September 2012, Accepted 24 December 2012, Available online 16 February 2013.

论文官网地址:https://doi.org/10.1016/j.imavis.2012.12.003