The 3D shapes of faces are well known to be discriminative. Yet despite this, they are rarely used for face recognition and always under controlled viewing conditions. We claim that this is a symptom of a serious but often overlooked problem with existing methods for single view 3D face reconstruction: when applied "in the wild", their 3D estimates are either unstable and change for different photos of the same subject or they are over-regularized and generic. In response, we describe a robust method for regressing discriminative 3D morphable face models (3DMM). We use a convolutional neural network (CNN) to regress 3DMM shape and texture parameters directly from an input photo. We overcome the shortage of training data required for this purpose by offering a method for generating huge numbers of labeled examples. The 3D estimates produced by our CNN surpass state of the art accuracy on the MICC data set. Coupled with a 3D-3D face matching pipeline, we show the first competitive face recognition results on the LFW, YTF and IJB-A benchmarks using 3D face shapes as representations, rather than the opaque deep feature vectors used by other modern systems.

Regressing Robust and Discriminative 3D Morphable Models with a very Deep Neural Network / Tran Anh, Tuan; Hassner, Tal; Masi, I; Medioni, Gerard. - (2017). (Intervento presentato al convegno IEEE/CVF Computer Vision and Pattern Recognition (CVPR) tenutosi a Honolulu, Hawaii.) [10.1109/CVPR.2017.163].

Regressing Robust and Discriminative 3D Morphable Models with a very Deep Neural Network

Masi I;
2017

Abstract

The 3D shapes of faces are well known to be discriminative. Yet despite this, they are rarely used for face recognition and always under controlled viewing conditions. We claim that this is a symptom of a serious but often overlooked problem with existing methods for single view 3D face reconstruction: when applied "in the wild", their 3D estimates are either unstable and change for different photos of the same subject or they are over-regularized and generic. In response, we describe a robust method for regressing discriminative 3D morphable face models (3DMM). We use a convolutional neural network (CNN) to regress 3DMM shape and texture parameters directly from an input photo. We overcome the shortage of training data required for this purpose by offering a method for generating huge numbers of labeled examples. The 3D estimates produced by our CNN surpass state of the art accuracy on the MICC data set. Coupled with a 3D-3D face matching pipeline, we show the first competitive face recognition results on the LFW, YTF and IJB-A benchmarks using 3D face shapes as representations, rather than the opaque deep feature vectors used by other modern systems.
2017
IEEE/CVF Computer Vision and Pattern Recognition (CVPR)
3d faces, 3DMM, deep learning, face analysis
04 Pubblicazione in atti di convegno::04b Atto di convegno in volume
Regressing Robust and Discriminative 3D Morphable Models with a very Deep Neural Network / Tran Anh, Tuan; Hassner, Tal; Masi, I; Medioni, Gerard. - (2017). (Intervento presentato al convegno IEEE/CVF Computer Vision and Pattern Recognition (CVPR) tenutosi a Honolulu, Hawaii.) [10.1109/CVPR.2017.163].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1458918
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