Leveraging Billions of Faces to Overcome Performance Barriers in Unconstrained Face Recognition

08/04/2011
by   Yaniv Taigman, et al.
0

We employ the face recognition technology developed in house at face.com to a well accepted benchmark and show that without any tuning we are able to considerably surpass state of the art results. Much of the improvement is concentrated in the high-valued performance point of zero false positive matches, where the obtained recall rate almost doubles the best reported result to date. We discuss the various components and innovations of our system that enable this significant performance gap. These components include extensive utilization of an accurate 3D reconstructed shape model dealing with challenges arising from pose and illumination. In addition, discriminative models based on billions of faces are used in order to overcome aging and facial expression as well as low light and overexposure. Finally, we identify a challenging set of identification queries that might provide useful focus for future research.

READ FULL TEXT

page 3

page 4

page 7

research
09/30/2018

A Multi-Face Challenging Dataset for Robust Face Recognition

Face recognition in images is an active area of interest among the compu...
research
11/17/2020

Facial Expressions as a Vulnerability in Face Recognition

This work explores facial expression bias as a security vulnerability of...
research
02/27/2020

The Mertens Unrolled Network (MU-Net): A High Dynamic Range Fusion Neural Network for Through the Windshield Driver Recognition

Face recognition of vehicle occupants through windshields in unconstrain...
research
02/28/2019

Face Recognition Under Varying Blur, Illumination and Expression in an Unconstrained Environment

Face recognition system is one of the esteemed research areas in pattern...
research
12/13/2013

Analysis and Understanding of Various Models for Efficient Representation and Accurate Recognition of Human Faces

In this paper we have tried to compare the various face recognition mode...
research
08/01/2018

Global Norm-Aware Pooling for Pose-Robust Face Recognition at Low False Positive Rate

In this paper, we propose a novel Global Norm-Aware Pooling (GNAP) block...

Please sign up or login with your details

Forgot password? Click here to reset