Face Verification from Depth using Privileged Information
Guido Borghi, Stefano Pini, Filippo Grazioli, Roberto Vezzani, Rita Cucchiara
In British Machine Vision Conference (BMVC), 2018
URL: http://bmvc2018.org/contents/papers/0410.pdf
Link: Paper
Abstract
In this paper, a deep Siamese architecture for depth-based face verification is presented. The proposed approach efficiently verifies if two face images belong to the same person while handling a great variety of head poses and occlusions. The architecture, namely JanusNet, consists in a combination of a depth, a RGB and a hybrid Siamese network. During the training phase, the hybrid network learns to extract complementary mid-level convolutional features which mimic the features of the RGB network, simultaneously leveraging on the light invariance of depth images. At testing time, the model, relying only on depth data, achieves state-of-art results and real time performance, despite the lack of deep-oriented depth-based datasets.
Recommended citation
@inproceedings{borghi2018face,
title={Face Verification from Depth using Privileged Information},
author={Borghi, Guido and Pini, Stefano and Grazioli, Filippo and Vezzani, Roberto and Cucchiara, Rita},
booktitle={British Machine Vision Conference (BMVC)},
pages={303},
year={2018}
}