In this paper we show how Grassmann distances and Grassmann kernels can be efficiently used to learn and classify face sequence videos. We propose two new methods, the Grassmann Distance Mutual Subspace Method (GD-MSM) which uses Grassmann distances to define the similarity between subspaces of images, and the Grassmann Kernel Support Vector Machine (GK-SVM), which applies two Grassmann kernels - the projection kernel and the Binet-Cauchy kernel - in a convex optimization scheme, using the Support Vector Machine (SVM) framework. GD-MSM and GK-SVM are compared in a face recognition task with several related methods using a large database of face image sequences from 100 subjects, containing expression changes related to a natural conversatio...
In the domain of video-based image set classification, a considerable advance has been made by model...
In this paper, a kernel classification distance metric learning framework is investigated for face v...
Statistical pattern recognition occupies a central place in the general context of machine learning ...
Computational performance associated with high-dimensional data is a common challenge for real-world...
In video based face recognition, great success has been made by representing videos as linear subspa...
In this thesis I propose a subspace-based learning paradigm for solving novel problems in machine le...
Abstract Automatic face recognition is a challenging problem which has received much attention durin...
This paper presents a real-time face recognition system. For the system to be real time, no external...
International audienceModern face recognition approaches target successful person identification in ...
The computer vision problem of face detection has over the years become a common high-requirements b...
Abstract—In this paper, we examine image and video-based recognition applications where the underlyi...
Subspace-based learning problems involve data whose elements are linear sub-spaces of a vector space...
We present a subspace approach to face detection with Support Vector Machine (SVMs). A linear SVM cl...
Modelling video sequences by subspaces has recently shown promise for recognising human actions. Sub...
In this paper the problem of training Support Vector Machines (SVMs) for video based face recognitio...
In the domain of video-based image set classification, a considerable advance has been made by model...
In this paper, a kernel classification distance metric learning framework is investigated for face v...
Statistical pattern recognition occupies a central place in the general context of machine learning ...
Computational performance associated with high-dimensional data is a common challenge for real-world...
In video based face recognition, great success has been made by representing videos as linear subspa...
In this thesis I propose a subspace-based learning paradigm for solving novel problems in machine le...
Abstract Automatic face recognition is a challenging problem which has received much attention durin...
This paper presents a real-time face recognition system. For the system to be real time, no external...
International audienceModern face recognition approaches target successful person identification in ...
The computer vision problem of face detection has over the years become a common high-requirements b...
Abstract—In this paper, we examine image and video-based recognition applications where the underlyi...
Subspace-based learning problems involve data whose elements are linear sub-spaces of a vector space...
We present a subspace approach to face detection with Support Vector Machine (SVMs). A linear SVM cl...
Modelling video sequences by subspaces has recently shown promise for recognising human actions. Sub...
In this paper the problem of training Support Vector Machines (SVMs) for video based face recognitio...
In the domain of video-based image set classification, a considerable advance has been made by model...
In this paper, a kernel classification distance metric learning framework is investigated for face v...
Statistical pattern recognition occupies a central place in the general context of machine learning ...