Deep Face Recognition: A Tutorial

Deep Face Recognition: A Tutorial

Abstract

Face recognition made tremendous leaps in the last five years with a myriad of systems proposing novel techniques substantially backed by deep convolutional neural networks (DCNN). Though face recognition performance skyrocketed using deep-learning, leading to the belief that this technique reached human performance, yet unconstrained face recognition remains an open problem. As deep-learning allowed achieving nearly perfect accuracy on the LFW dataset, the newly released IJB sets showed how face recognition remains a difficult problem in unconstrained environments. This tutorial summarizes the main advances in deep face recognition and, more in general, in learning face representations for verification and identification. The tutorial provides a clear, structured presentation of the principal, state-of-the-art face recognition techniques appeared in the last five years in top computer vision venues. The participants will be guided firstly to understand the face recognition problem and its evaluation criteria (closed-set or open-set identification; verification) and, then, to hear about very recent methods for deep face recognition.

authors image

Survey Paper

Slides

Download

You can download the slides in PDF format.

Please remember to cite our paper if you use our material, thanks!

Citation

Please, if you use the slides or survey paper cite as follows:

@inproceedings{masi:deepfacetut18,
  title={Deep Face Recognition: a Survey},
  author={Masi, Iacopo and Wu, Yue and Hassner, Tal and Natarajan, Prem},
  booktitle = {SIBGRAPI - Conference on Graphics, Patterns and Images},
  year = {2018}
}

01 - Introduction

02- Training Data + Preprocessing

03 - Network Architecture, Loss Functions and Disentanglment

04 - Face Matching

Iacopo Masi
Iacopo Masi
Associate Professor (PI)

My research interests include computer vision, biometrics, AI.