In this paper, we propose a Multi-Manifold Discriminant Analysis (MMDA) method for an image feature extraction and pattern recognition based on graph embedded learning and under the Fisher discriminant analysis framework. In an MMDA, the within-class graph and between-class graph are, respectively, designed to characterize the within-class compactness and the between-class separability, seeking for the discriminant matrix to simultaneously maximize the between-class scatter and minimize the within-class scatter. In addition, in an MMDA, the within-class graph can represent the sub-manifold information, while the between-class graph can represent the multi-manifold information. The proposed MMDA is extensively examined by using the FERET, AR...
2011 18th IEEE International Conference on Image Processing, ICIP 2011, Brussels, 11-14 September 20...
Abstract—Over the past few decades, a large family of algorithms—supervised or unsupervised; stemmin...
Traditional manifold learning methods generally include a single projection stage that maps high-dim...
Abstract: In this paper, we propose a Multi-Manifold Discriminant Analysis (MMDA) method for image f...
Previous manifold learning algorithms mainly focus on uncovering the low dimensional geometry struct...
Abstract—Manifold learning is an important feature extrac-tion approach in data mining. This paper p...
Abstract. In this paper we propose a novel non-linear discriminative analysis technique for manifold...
Abstract—Conventional appearance-based face recognition methods usually assume that there are multip...
Conventional appearance-based face recognition meth-ods usually assume there are multiple samples pe...
A convenient way of dealing with image sets is to represent them as points on Grassmannian manifolds...
Usually many real datasets in pattern recognition applications contain a large quantity of noisy and...
Manifold learning aims to map the original data from a high-dimensional space into a low-dimensional...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
In many image classification applications, it is common to extract multiple visual features from dif...
We propose a novel manifold learning approach, called Neighborhood Discriminant Projection (NDP), fo...
2011 18th IEEE International Conference on Image Processing, ICIP 2011, Brussels, 11-14 September 20...
Abstract—Over the past few decades, a large family of algorithms—supervised or unsupervised; stemmin...
Traditional manifold learning methods generally include a single projection stage that maps high-dim...
Abstract: In this paper, we propose a Multi-Manifold Discriminant Analysis (MMDA) method for image f...
Previous manifold learning algorithms mainly focus on uncovering the low dimensional geometry struct...
Abstract—Manifold learning is an important feature extrac-tion approach in data mining. This paper p...
Abstract. In this paper we propose a novel non-linear discriminative analysis technique for manifold...
Abstract—Conventional appearance-based face recognition methods usually assume that there are multip...
Conventional appearance-based face recognition meth-ods usually assume there are multiple samples pe...
A convenient way of dealing with image sets is to represent them as points on Grassmannian manifolds...
Usually many real datasets in pattern recognition applications contain a large quantity of noisy and...
Manifold learning aims to map the original data from a high-dimensional space into a low-dimensional...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
In many image classification applications, it is common to extract multiple visual features from dif...
We propose a novel manifold learning approach, called Neighborhood Discriminant Projection (NDP), fo...
2011 18th IEEE International Conference on Image Processing, ICIP 2011, Brussels, 11-14 September 20...
Abstract—Over the past few decades, a large family of algorithms—supervised or unsupervised; stemmin...
Traditional manifold learning methods generally include a single projection stage that maps high-dim...