Sparse Illumination Learning and Transfer for Single-Sample Face Recognition with Image Corruption and Misalignment

02/08/2014
by   Liansheng Zhuang, et al.
0

Single-sample face recognition is one of the most challenging problems in face recognition. We propose a novel algorithm to address this problem based on a sparse representation based classification (SRC) framework. The new algorithm is robust to image misalignment and pixel corruption, and is able to reduce required gallery images to one sample per class. To compensate for the missing illumination information traditionally provided by multiple gallery images, a sparse illumination learning and transfer (SILT) technique is introduced. The illumination in SILT is learned by fitting illumination examples of auxiliary face images from one or more additional subjects with a sparsely-used illumination dictionary. By enforcing a sparse representation of the query image in the illumination dictionary, the SILT can effectively recover and transfer the illumination and pose information from the alignment stage to the recognition stage. Our extensive experiments have demonstrated that the new algorithms significantly outperform the state of the art in the single-sample regime and with less restrictions. In particular, the single-sample face alignment accuracy is comparable to that of the well-known Deformable SRC algorithm using multiple gallery images per class. Furthermore, the face recognition accuracy exceeds those of the SRC and Extended SRC algorithms using hand labeled alignment initialization.

READ FULL TEXT

page 10

page 12

page 14

page 15

page 17

page 18

research
08/01/2013

Compositional Dictionaries for Domain Adaptive Face Recognition

We present a dictionary learning approach to compensate for the transfor...
research
03/15/2017

Face Recognition using Multi-Modal Low-Rank Dictionary Learning

Face recognition has been widely studied due to its importance in differ...
research
11/03/2011

Sparsity and Robustness in Face Recognition

This report concerns the use of techniques for sparse signal representat...
research
01/20/2015

Robust Face Recognition by Constrained Part-based Alignment

Developing a reliable and practical face recognition system is a long-st...
research
09/12/2016

Semi-Supervised Sparse Representation Based Classification for Face Recognition with Insufficient Labeled Samples

This paper addresses the problem of face recognition when there is only ...
research
06/27/2012

Deep Lambertian Networks

Visual perception is a challenging problem in part due to illumination v...
research
11/01/2016

Dictionary Integration using 3D Morphable Face Models for Pose-invariant Collaborative-representation-based Classification

The paper presents a dictionary integration algorithm using 3D morphable...

Please sign up or login with your details

Forgot password? Click here to reset