Abstract — A novel face recognition method is proposed, in which face images are represented by a set of local labeled graphs, each containing information about the appearance and geometry of a 3-tuple of face feature points, extracted using Local Feature Analysis (LFA) technique. Our method automatically learns a model set and builds a graph space for each individual. A two-stage method for optimal matching between the graphs extracted from a probe image and the trained model graphs is proposed. The recognition of each probe face image is performed by assigning it to the trained individual with the maximum number of references. Our approach achieves perfect result on the ORL face set and an accuracy rate of 98.4 % on the FERET face set, wh...
In this work, I focus in a simple parameter-free statistical model that requires few training data a...
The goal of this research project was to come up with a combined face recognition algorithm which ou...
The thesis presents a 2D face recognition system using Markov random field matching method-ology for...
Face recognition has been studied extensively; however, real-world face recognition still remains a ...
Abstract—Face recognition has been studied extensively; how-ever, real-world face recognition still ...
This paper presents a novel learning approach for Face Recognition by introducing Optimal Local Basi...
This paper presents a new method for face recognition which learns a face similarity measure from ex...
A completely automatic face recognition system is presented. The method works on color and gray leve...
This paper presents a face recognition algorithm based on the matching of local features extracted f...
Elastic graph matching is one of the most well known techniques for frontal face recognition/verific...
008 Face recognition ssifi tion man tion ons in m minima in landmark localization, but also circumve...
Abstract—In this paper, a novel algorithm for finding discrimi-nant person-specific facial models is...
In this paper, we present a local feature learning method for face recognition to deal with varying ...
In contrast to comparing faces via single exemplars, match-ing sets of face images increases robustn...
Face detection plays an important role in many applications such as face recognition, face image dat...
In this work, I focus in a simple parameter-free statistical model that requires few training data a...
The goal of this research project was to come up with a combined face recognition algorithm which ou...
The thesis presents a 2D face recognition system using Markov random field matching method-ology for...
Face recognition has been studied extensively; however, real-world face recognition still remains a ...
Abstract—Face recognition has been studied extensively; how-ever, real-world face recognition still ...
This paper presents a novel learning approach for Face Recognition by introducing Optimal Local Basi...
This paper presents a new method for face recognition which learns a face similarity measure from ex...
A completely automatic face recognition system is presented. The method works on color and gray leve...
This paper presents a face recognition algorithm based on the matching of local features extracted f...
Elastic graph matching is one of the most well known techniques for frontal face recognition/verific...
008 Face recognition ssifi tion man tion ons in m minima in landmark localization, but also circumve...
Abstract—In this paper, a novel algorithm for finding discrimi-nant person-specific facial models is...
In this paper, we present a local feature learning method for face recognition to deal with varying ...
In contrast to comparing faces via single exemplars, match-ing sets of face images increases robustn...
Face detection plays an important role in many applications such as face recognition, face image dat...
In this work, I focus in a simple parameter-free statistical model that requires few training data a...
The goal of this research project was to come up with a combined face recognition algorithm which ou...
The thesis presents a 2D face recognition system using Markov random field matching method-ology for...