Abstract—This paper proposes a new measure of “distance ” between faces. This measure involves the estimation of the set of possible transformations between face images of the same person. The global transformation, which is assumed to be too complex for direct modeling, is approximated by a patchwork of local transformations, under a constraint imposing consistency between neighboring local transformations. The proposed system of local transformations and neighboring constraints is embedded within the probabilistic framework of a two-dimensional hidden Markov model. More specifically, we model two types of intraclass variabilities involving variations in facial expressions and illumination, respectively. The performance of the resulting me...
Many object classes, including human faces, can be modeled as a set of characteristic parts arranged...
[[abstract]]We present a probabilistic graphical model to formulate and deal with video-based face r...
Abstract. In this paper, we propose a unified scheme of subspace and distance metric learning under ...
A novel approach for content-based image retrieval and its specialization to face recognition are d...
Abstract—Many face recognition algorithms use “distance-based ” methods: Feature vectors are extract...
This dissertation introduces work on face recognition using a novel technique based on Hidden Marko...
We propose subspace distance measures to analyze the similarity between intrapersonal face subspaces...
We propose a subspace distance measure to analyze the similarity between intrapersonal face subspace...
We propose a subspace distance measure to analyze the similarity between intrapersonal face subspace...
It has been previously demonstrated that systems based on local features and relatively complex stat...
[[abstract]]This paper presents a probabilistic graphical model to formulate and deal with video-bas...
In this paper, we describe an algorithm for object recognition that explicitly models and estimates ...
The work presented in this paper focuses on the use of Hidden Markov Models for face recognition. A ...
International audienceIn this paper we present a new architecture for face recognition with a single...
AbstractIn the paper we propose a face verifying algorithm for face recognition that can identify tw...
Many object classes, including human faces, can be modeled as a set of characteristic parts arranged...
[[abstract]]We present a probabilistic graphical model to formulate and deal with video-based face r...
Abstract. In this paper, we propose a unified scheme of subspace and distance metric learning under ...
A novel approach for content-based image retrieval and its specialization to face recognition are d...
Abstract—Many face recognition algorithms use “distance-based ” methods: Feature vectors are extract...
This dissertation introduces work on face recognition using a novel technique based on Hidden Marko...
We propose subspace distance measures to analyze the similarity between intrapersonal face subspaces...
We propose a subspace distance measure to analyze the similarity between intrapersonal face subspace...
We propose a subspace distance measure to analyze the similarity between intrapersonal face subspace...
It has been previously demonstrated that systems based on local features and relatively complex stat...
[[abstract]]This paper presents a probabilistic graphical model to formulate and deal with video-bas...
In this paper, we describe an algorithm for object recognition that explicitly models and estimates ...
The work presented in this paper focuses on the use of Hidden Markov Models for face recognition. A ...
International audienceIn this paper we present a new architecture for face recognition with a single...
AbstractIn the paper we propose a face verifying algorithm for face recognition that can identify tw...
Many object classes, including human faces, can be modeled as a set of characteristic parts arranged...
[[abstract]]We present a probabilistic graphical model to formulate and deal with video-based face r...
Abstract. In this paper, we propose a unified scheme of subspace and distance metric learning under ...