We address the problem of metric learning for multi-view data, namely the construction of embedding projections from data in different representations into a shared feature space, such that the Euclidean distance in this space provides a meaningful within-view as well as between-view similarity. Our motivation stems from the problem of cross-media retrieval tasks, where the availability of a joint Euclidean distance function is a pre-requisite to allow fast, in particular hashing-based, nearest neighbor queries. We formulate an objective function that expresses the intuitive concept that matching samples are mapped closely together in the output space, whereas non-matching samples are pushed apart, no matter in which view they are available...
Abstract. Distance metric learning has been widely investigated in machine learning and information ...
The performance of image retrieval depends critically on the semantic representation and the distanc...
It is widely understood that the performance of the nearest neighbor (NN) rule is dependent on: (i) ...
We address the problem of metric learning for multi-view data, namely the construction of embedding ...
International audienceWe consider the problem of metric learning for multi-view data and present a n...
This paper presents a sharable and individual multi-view metric learning (MvML) approach for visual ...
Nearest neighbor retrieval is the task of identifying, given a database of objects and a query objec...
Many machine learning and computer vision problems (clustering, classification) make use of a distan...
Many machine learning algorithms rely heavily on the existence of a good measure of (dis-)similarity...
We show how to learn aMahanalobis distance metric for k-nearest neigh-bor (kNN) classification by se...
The goal of machine learning is to build automated systems that can classify and recognize com-plex ...
Learning an ideal metric is crucial to many tasks in computer vision. Diverse feature representation...
Learning from multi-view data is important in many applications. In this paper, we propose a novel c...
BoostMap is a recently proposed method for efficient approximate nearest neighbor retrieval in arbit...
We present a novel approach to low-dimensional neighbor embedding for visualization, based on formul...
Abstract. Distance metric learning has been widely investigated in machine learning and information ...
The performance of image retrieval depends critically on the semantic representation and the distanc...
It is widely understood that the performance of the nearest neighbor (NN) rule is dependent on: (i) ...
We address the problem of metric learning for multi-view data, namely the construction of embedding ...
International audienceWe consider the problem of metric learning for multi-view data and present a n...
This paper presents a sharable and individual multi-view metric learning (MvML) approach for visual ...
Nearest neighbor retrieval is the task of identifying, given a database of objects and a query objec...
Many machine learning and computer vision problems (clustering, classification) make use of a distan...
Many machine learning algorithms rely heavily on the existence of a good measure of (dis-)similarity...
We show how to learn aMahanalobis distance metric for k-nearest neigh-bor (kNN) classification by se...
The goal of machine learning is to build automated systems that can classify and recognize com-plex ...
Learning an ideal metric is crucial to many tasks in computer vision. Diverse feature representation...
Learning from multi-view data is important in many applications. In this paper, we propose a novel c...
BoostMap is a recently proposed method for efficient approximate nearest neighbor retrieval in arbit...
We present a novel approach to low-dimensional neighbor embedding for visualization, based on formul...
Abstract. Distance metric learning has been widely investigated in machine learning and information ...
The performance of image retrieval depends critically on the semantic representation and the distanc...
It is widely understood that the performance of the nearest neighbor (NN) rule is dependent on: (i) ...