This paper presents a sharable and individual multi-view metric learning (MvML) approach for visual recognition. Unlike conventional metric leaning methods which learn a distance metric on either a single type of feature representation or a concatenated representation of multiple types of features, the proposed MvML jointly learns an optimal combination of multiple distance metrics on multi-view representations, where not only it learns an individual distance metric for each view to retain its specific property but also a shared representation for different views in a unified latent subspace to preserve the common properties. The objective function of the MvML is formulated in the large margin learning framework via pairwise constraints, un...
In this paper, we propose a new multi-manifold metric learning (MMML) method for the task of face r...
Previous metric learning approaches are only able to learn the metric based on single concatenated m...
© 2017 IEEE. Despite the promising progress made in recent years, person re-identification remains a...
This paper presents a sharable and individual multi-view metric learning (MvML) approach for visual ...
How to design an effective distance function plays an important role in many computer vision and pat...
Abstract. Person re-identification is a challenging problem due to drastic variations in viewpoint, ...
International audienceIn this article we tackle the supervised multi-view learning problem with kern...
Metric learning has attracted wide attention in face and kinship verification, and a number of such ...
Many metric learning approaches neglect that the real world multi-class problems share strong visual...
Multi-view data analysis is a key technology for making effective decisions by leveraging informatio...
Conventional metric learning methods usually assume that the training and test samples are captured ...
Recently, lots of visual representations have been developed for computer vision applications. As di...
International audienceWe consider the problem of metric learning for multi-view data and present a n...
Many machine learning and computer vision problems (clustering, classification) make use of a distan...
Conventional metric learning methods usually assume that the training and test samples are captured ...
In this paper, we propose a new multi-manifold metric learning (MMML) method for the task of face r...
Previous metric learning approaches are only able to learn the metric based on single concatenated m...
© 2017 IEEE. Despite the promising progress made in recent years, person re-identification remains a...
This paper presents a sharable and individual multi-view metric learning (MvML) approach for visual ...
How to design an effective distance function plays an important role in many computer vision and pat...
Abstract. Person re-identification is a challenging problem due to drastic variations in viewpoint, ...
International audienceIn this article we tackle the supervised multi-view learning problem with kern...
Metric learning has attracted wide attention in face and kinship verification, and a number of such ...
Many metric learning approaches neglect that the real world multi-class problems share strong visual...
Multi-view data analysis is a key technology for making effective decisions by leveraging informatio...
Conventional metric learning methods usually assume that the training and test samples are captured ...
Recently, lots of visual representations have been developed for computer vision applications. As di...
International audienceWe consider the problem of metric learning for multi-view data and present a n...
Many machine learning and computer vision problems (clustering, classification) make use of a distan...
Conventional metric learning methods usually assume that the training and test samples are captured ...
In this paper, we propose a new multi-manifold metric learning (MMML) method for the task of face r...
Previous metric learning approaches are only able to learn the metric based on single concatenated m...
© 2017 IEEE. Despite the promising progress made in recent years, person re-identification remains a...