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Papers/3D Face Morphable Models "In-the-Wild"

3D Face Morphable Models "In-the-Wild"

James Booth, Epameinondas Antonakos, Stylianos Ploumpis, George Trigeorgis, Yannis Panagakis, Stefanos Zafeiriou

2017-01-19CVPR 2017 73D Face Reconstruction
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Abstract

3D Morphable Models (3DMMs) are powerful statistical models of 3D facial shape and texture, and among the state-of-the-art methods for reconstructing facial shape from single images. With the advent of new 3D sensors, many 3D facial datasets have been collected containing both neutral as well as expressive faces. However, all datasets are captured under controlled conditions. Thus, even though powerful 3D facial shape models can be learnt from such data, it is difficult to build statistical texture models that are sufficient to reconstruct faces captured in unconstrained conditions ("in-the-wild"). In this paper, we propose the first, to the best of our knowledge, "in-the-wild" 3DMM by combining a powerful statistical model of facial shape, which describes both identity and expression, with an "in-the-wild" texture model. We show that the employment of such an "in-the-wild" texture model greatly simplifies the fitting procedure, because there is no need to optimize with regards to the illumination parameters. Furthermore, we propose a new fast algorithm for fitting the 3DMM in arbitrary images. Finally, we have captured the first 3D facial database with relatively unconstrained conditions and report quantitative evaluations with state-of-the-art performance. Complementary qualitative reconstruction results are demonstrated on standard "in-the-wild" facial databases. An open source implementation of our technique is released as part of the Menpo Project.

Results

TaskDatasetMetricValueModel
Facial Recognition and ModellingFlorenceAverage 3D Error1.82itwmm
Face ReconstructionFlorenceAverage 3D Error1.82itwmm
3DFlorenceAverage 3D Error1.82itwmm
3D Face ModellingFlorenceAverage 3D Error1.82itwmm
3D Face ReconstructionFlorenceAverage 3D Error1.82itwmm

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