3D face recognition: An automatic strategy based on geometrical descriptors and landmarks

In the last decades, several three-dimensional face recognition algorithms have been thought, designed, and assessed. What they have in common can be hardly said, as they differ in theoretical background, tools, and method. Here we propose a new 3D face recognition algorithm, entirely developed in M...

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Veröffentlicht in:Robotics and autonomous systems 2014-12, Vol.62 (12), p.1768-1776
Hauptverfasser: Vezzetti, Enrico, Marcolin, Federica, Fracastoro, Giulia
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Sprache:eng
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Zusammenfassung:In the last decades, several three-dimensional face recognition algorithms have been thought, designed, and assessed. What they have in common can be hardly said, as they differ in theoretical background, tools, and method. Here we propose a new 3D face recognition algorithm, entirely developed in Matlab®, whose framework totally comes from differential geometry. First, 17 soft-tissue landmarks are automatically extracted relying on geometrical properties of facial shape. We made use of derivatives, coefficients of the fundamental forms, principal, mean, and Gaussian curvatures, and shape and curvedness indexes. Then, a set of geodesic and Euclidean distances, together with nose volume and ratios between geodesic and Euclidean distances, has been computed and summed in a final score, used to compare faces. The highest contribution of this work, we believe, is that its theoretical substratum is differential geometry with its various descriptors, which is something totally new in the field. •A new 3D face recognition algorithm is proposed, developed in Matlab.•17 landmarks are automatically extracted relying on facial geometrical properties.•Geodesic and Euclidean distances, nose volume, and ratios are computed.•These descriptors are summed in a final score and used to compare faces.•Recognition rate is 90.29% over a dataset of 244 faces belonging to 38 people.
ISSN:0921-8890
1872-793X
DOI:10.1016/j.robot.2014.07.009