Modeling subspaces of a distribution of interest in high dimensional spaces is a challenging problem in pattern analysis. In this paper, we present a novel framework for pose invariant face detection through multi-view face distribution modeling. The approach is aimed to learn a set of low-dimensional subspaces from an originally nonlinear distribution by using the mixtures of probabilistic PCA [16]. From the experiments, we found the learned PPCA models are of low dimensionality and exhibit high local linearity, and consequently offer an efficient representation for visual recognition. The model is then used to extract features and select “representative ” negative training samples. Multi-view face detection is performed in the derived fea...
In this paper we consider to study the distribution of the vectors of face in the dimensional space ...
Abstract: In video surveillance, the face recognition usually aims at recognizing a non-frontal low ...
In this paper, we present a face detector based on Cascade Deformable Part Models (CDPM) [1]. Our mo...
Face images are subject to effects of view changes and artifacts such as variations in illumination ...
In this paper, we present a novel maximum correlation sample subspace method and apply it to human f...
We introduce in this paper two probabilistic reasoning models (PRM-1 and PRM-2) which combine the Pr...
Abstract. Subspace face recognition often suffers from two problems: (1) the training sample set is ...
Multi-view face detection plays an important role in many applications. This paper presents a statis...
To recognize faces in video, face appearances have been widely modeled as piece-wise local linear mo...
We present a multi-view face detector based on Cascade Deformable Part Models (CDPM). Over the last ...
We propose a novel pose-invariant face recognition approach which we call Dis-criminant Multiple Cou...
In order to improve the speed and robustness of multi-view face detection, this dissertation propose...
International audienceIn this paper we present a face model based on learning a relation between loc...
A new learning model based on autoassociative neural networks is developped and applied to face dete...
Face detection, localization and recognition from multi-poses are one of the most challenging topics...
In this paper we consider to study the distribution of the vectors of face in the dimensional space ...
Abstract: In video surveillance, the face recognition usually aims at recognizing a non-frontal low ...
In this paper, we present a face detector based on Cascade Deformable Part Models (CDPM) [1]. Our mo...
Face images are subject to effects of view changes and artifacts such as variations in illumination ...
In this paper, we present a novel maximum correlation sample subspace method and apply it to human f...
We introduce in this paper two probabilistic reasoning models (PRM-1 and PRM-2) which combine the Pr...
Abstract. Subspace face recognition often suffers from two problems: (1) the training sample set is ...
Multi-view face detection plays an important role in many applications. This paper presents a statis...
To recognize faces in video, face appearances have been widely modeled as piece-wise local linear mo...
We present a multi-view face detector based on Cascade Deformable Part Models (CDPM). Over the last ...
We propose a novel pose-invariant face recognition approach which we call Dis-criminant Multiple Cou...
In order to improve the speed and robustness of multi-view face detection, this dissertation propose...
International audienceIn this paper we present a face model based on learning a relation between loc...
A new learning model based on autoassociative neural networks is developped and applied to face dete...
Face detection, localization and recognition from multi-poses are one of the most challenging topics...
In this paper we consider to study the distribution of the vectors of face in the dimensional space ...
Abstract: In video surveillance, the face recognition usually aims at recognizing a non-frontal low ...
In this paper, we present a face detector based on Cascade Deformable Part Models (CDPM) [1]. Our mo...