Real face recognition is a challenging problem especially when face images are subject to distortions. This paper presents an approach to tackle partial occlusion distortions present in real face recognition using a single training sample per person. First, original images are partitioned into multiple blocks and Local Binary Patterns are applied as a local descriptor on each block separately. Then, a dimensionality reduction of the resulting descriptors is carried out using Kernel Principle Component Analysis. Once done, a random sampling method is used to select patches at random and hence build several sub-SVM classifiers. Finally, the results from each sub-classifier are combined in order to increase the recognition performance. To demo...
Sparse representation-based classification (SRC) method has demonstrated promising results in face r...
This paper proposes a method to address issues regarding uncontrolled conditions in face recognition...
A face recognition system consists of two integrated parts: One is the face recognition algorithm, t...
Real face recognition is a challenging problem especially when face images are subject to distortion...
While there has been a massive increase in research into face recognition, it remains a challenging ...
While there has been a massive increase in research into face recognition, it remains a challenging ...
This thesis considers the problem of recognizing human faces despite variations in illumination, pos...
Abstract: The small sample size (SSS) and the sensitivity to variations such as illumination, expres...
Abstract. Subspace face recognition often suffers from two problems: (1) the training sample set is ...
Abstract. It is well known that some facial attributes –like soft bio-metric traits – can increase t...
Part 4: Pattern Recognition and Image ProcessingInternational audienceIn the paper we investigate a ...
In this paper, illuminated by the great success of Universal Back-groundModeling (UBM) for speech/sp...
International audienceRecent research has demonstrated the negative impact of makeup on automated fa...
In this paper, we propose a new robust face recognition method through pixel selection. The method i...
The problem of face recognition has been extensively studied in the available literature, however, s...
Sparse representation-based classification (SRC) method has demonstrated promising results in face r...
This paper proposes a method to address issues regarding uncontrolled conditions in face recognition...
A face recognition system consists of two integrated parts: One is the face recognition algorithm, t...
Real face recognition is a challenging problem especially when face images are subject to distortion...
While there has been a massive increase in research into face recognition, it remains a challenging ...
While there has been a massive increase in research into face recognition, it remains a challenging ...
This thesis considers the problem of recognizing human faces despite variations in illumination, pos...
Abstract: The small sample size (SSS) and the sensitivity to variations such as illumination, expres...
Abstract. Subspace face recognition often suffers from two problems: (1) the training sample set is ...
Abstract. It is well known that some facial attributes –like soft bio-metric traits – can increase t...
Part 4: Pattern Recognition and Image ProcessingInternational audienceIn the paper we investigate a ...
In this paper, illuminated by the great success of Universal Back-groundModeling (UBM) for speech/sp...
International audienceRecent research has demonstrated the negative impact of makeup on automated fa...
In this paper, we propose a new robust face recognition method through pixel selection. The method i...
The problem of face recognition has been extensively studied in the available literature, however, s...
Sparse representation-based classification (SRC) method has demonstrated promising results in face r...
This paper proposes a method to address issues regarding uncontrolled conditions in face recognition...
A face recognition system consists of two integrated parts: One is the face recognition algorithm, t...