In this paper, we present Linear Discriminant Projections (LDP) for reducing dimensionality and improving discriminability of local image descriptors. We place LDP into the context of state-of-the-art discriminant projections and analyze its properties. LDP requires a large set of training data with point-to-point correspondence ground truth. We demonstrate that training data produced by a simulation of image transformations leads to nearly the same results as the real data with correspondence ground truth. This makes it possible to apply LDP as well as other discriminant projection approaches to the problems where the correspondence ground truth is not available, such as image categorization. We perform an extensive experimental evaluation...
Representation-based classification methods such as sparse representation-based classification (SRC)...
Abstract—This paper develops an unsupervised discriminant projection (UDP) technique for dimensional...
Visual descriptor learning seeks a projection to embed local descriptors (e.g., SIFT descriptors) in...
This paper proposes a general method for improving image descriptors using discriminant projections....
This paper proposes a general method for improving image descriptors using discriminant projections....
Abstract—In this paper, we explore methods for learning local image descriptors from training data. ...
In this paper, we propose a novel subspace learning algorithm called Local Feature Discriminant Proj...
Dimensionality reduction is an important issue when facing high-dimensional data. For supervised dim...
This thesis addresses the problem of designing discriminative image representations for a variety of...
Abstract We propose a novel linear dimensionality reduction algorithm, namely Locally Regressive Pro...
AbstractIn this paper, we consider the problem of semi-supervised dimensionality reduction. We focus...
This paper presents a Local Learning Projection (LLP) approach for linear dimensionality reduction. ...
International audienceThis paper addresses the challenging task of recognizing and locating objects ...
Reducing the dimensionality of data without losing intrinsic information is an important preprocessi...
Abstract. A linear, discriminative, supervised technique for reducing feature vec-tors extracted fro...
Representation-based classification methods such as sparse representation-based classification (SRC)...
Abstract—This paper develops an unsupervised discriminant projection (UDP) technique for dimensional...
Visual descriptor learning seeks a projection to embed local descriptors (e.g., SIFT descriptors) in...
This paper proposes a general method for improving image descriptors using discriminant projections....
This paper proposes a general method for improving image descriptors using discriminant projections....
Abstract—In this paper, we explore methods for learning local image descriptors from training data. ...
In this paper, we propose a novel subspace learning algorithm called Local Feature Discriminant Proj...
Dimensionality reduction is an important issue when facing high-dimensional data. For supervised dim...
This thesis addresses the problem of designing discriminative image representations for a variety of...
Abstract We propose a novel linear dimensionality reduction algorithm, namely Locally Regressive Pro...
AbstractIn this paper, we consider the problem of semi-supervised dimensionality reduction. We focus...
This paper presents a Local Learning Projection (LLP) approach for linear dimensionality reduction. ...
International audienceThis paper addresses the challenging task of recognizing and locating objects ...
Reducing the dimensionality of data without losing intrinsic information is an important preprocessi...
Abstract. A linear, discriminative, supervised technique for reducing feature vec-tors extracted fro...
Representation-based classification methods such as sparse representation-based classification (SRC)...
Abstract—This paper develops an unsupervised discriminant projection (UDP) technique for dimensional...
Visual descriptor learning seeks a projection to embed local descriptors (e.g., SIFT descriptors) in...