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Do We Need Depth in State-Of-The-Art Face Authentication?

2020-03-24 14:51:25
Amir Livne, Alex Bronstein, Ron Kimmel, Ziv Aviv, Shahaf Grofit

Abstract

Some face recognition methods are designed to utilize geometric features extracted from depth sensors to handle the challenges of single-image based recognition technologies. However, calculating the geometrical data is an expensive and challenging process. Here, we introduce a novel method that learns distinctive geometric features from stereo camera systems without the need to explicitly compute the facial surface or depth map. The raw face stereo images along with coordinate maps allow a CNN to learn geometric features. This way, we keep the simplicity and cost efficiency of recognition from a single image, while enjoying the benefits of geometric data without explicitly reconstructing it. We demonstrate that the suggested method outperforms both existing single-image and explicit depth based methods on large-scale benchmarks. We also provide an ablation study to show that the suggested method uses the coordinate maps to encode more informative features.

Abstract (translated)

URL

https://arxiv.org/abs/2003.10895

PDF

https://arxiv.org/pdf/2003.10895.pdf


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