In this paper, we investigate the contribution of dynamic evolution of 3D faces to identity recognition. To this end, we adopt a subspace representation of the flow of curvature-maps computed on 3D facial frames of a sequence, after normalizing their pose. Such representation allows us to embody the shape as well as its temporal evolution within the same subspace representation. Dictionary learning and sparse coding over the space of fixed-dimensional subspaces, called Grassmann manifold, have been used to perform face recognition. We have conducted extensive experiments on the BU-4DFE dataset. The obtained results of the proposed approach provide promising results.

A Grassmann framework for 4D facial shape analysis / Alashkar, Taleb; Ben Amor, Boulbaba; Daoudi, Mohamed; Berretti, Stefano. - In: PATTERN RECOGNITION. - ISSN 0031-3203. - STAMPA. - 57:(2016), pp. 21-30. [10.1016/j.patcog.2016.03.013]

A Grassmann framework for 4D facial shape analysis

BERRETTI, STEFANO
2016

Abstract

In this paper, we investigate the contribution of dynamic evolution of 3D faces to identity recognition. To this end, we adopt a subspace representation of the flow of curvature-maps computed on 3D facial frames of a sequence, after normalizing their pose. Such representation allows us to embody the shape as well as its temporal evolution within the same subspace representation. Dictionary learning and sparse coding over the space of fixed-dimensional subspaces, called Grassmann manifold, have been used to perform face recognition. We have conducted extensive experiments on the BU-4DFE dataset. The obtained results of the proposed approach provide promising results.
2016
57
21
30
Alashkar, Taleb; Ben Amor, Boulbaba; Daoudi, Mohamed; Berretti, Stefano
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Utilizza questo identificatore per citare o creare un link a questa risorsa: https://hdl.handle.net/2158/1050238
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