Abstract

Nearest subspace (NS) classification based on linear regression technique is a very straightforward and efficient method for face recognition. A recently developed NS method, namely the linear regression-based classification (LRC), uses downsampled face images as features to perform face recognition. The basic assumption behind this kind method is that samples from a certain class lie on their own class-specific subspace. Since there are only few training samples for each individual class, which will cause the small sample size (SSS) problem, this problem gives rise to misclassification of previous NS methods. In this paper, we propose two novel LRC methods using the idea that every class-specific subspace has its unique basis vectors. Thus, we consider that each class-specific subspace is spanned by two kinds of basis vectors which are the common basis vectors shared by many classes and the class-specific basis vectors owned by one class only. Based on this concept, two classification methods, namely robust LRC 1 and 2 (RLRC 1 and 2), are given to achieve more robust face recognition. Unlike some previous methods which need to extract class-specific basis vectors, the proposed methods are developed merely based on the existence of the class-specific basis vectors but without actually calculating them. Experiments on three well known face databases demonstrate very good performance of the new methods compared with other state-of-the-art methods.

Highlights

  • Face recognition, a user-friendly identity authentication technology, has become one of the most intensively studied topics in computer science [1,2,3], and is very popular in neuroscience [4,5], which has a lot of important applications in security systems, law enforcement, and commerce

  • We propose a new idea that the effectiveness of linear regression-based classification (LRC) comes from the basis vectors of each class-specific subspace, i.e. class-specific basis vectors which have been used in previous studies

  • We test our methods on three benchmark face databases to demonstrate the performance of Robust Linear Regression Classification 1 (RLRC 1) and 2

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Summary

Introduction

A user-friendly identity authentication technology, has become one of the most intensively studied topics in computer science [1,2,3], and is very popular in neuroscience [4,5], which has a lot of important applications in security systems, law enforcement, and commerce. Two main issues in a face recognition system are feature extraction and classification. Researchers used geometric features of a face to perform recognition. Studies showed that template matching methods outperform the geometric feature-based ones. To avoid the curse of dimensionality, extracted features from face images are used to perform classification in a low dimensional feature space [7]. To design a robust classifier is of the key importance for the face recognizer

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