Clustering images has been an interesting problem for computer vision and machine learning researchers for many years. However as the number of categories increases, image clustering becomes extremely hard and is not possible to use for many practical applications. Researchers have proposed several methods that use semi-supervision from humans to improve clustering. Constrained clustering, where users indicate whether an image pair belong to the same category or not, is a well-known paradigm for semi-supervision. Past research has shown that pairwise constraints have the potential to significantly improve clustering performance. There are two major components to constrained clustering research: how pairwise constraints can be used to impro...
A number of clustering algorithms have been proposed for use in tasks where a limited degree of supe...
A number of clustering algorithms have been proposed for use in tasks where a limited degree of supe...
In many machine learning domains, there is a large supply of unlabeled data but limited labeled data...
Clustering images has been an interesting problem for computer vision and machine learning researche...
In this paper, we propose a method of cluster-ing large image sets using human input. We assume an a...
One of the key tools to gain knowledge from data is clustering: identifying groups of instances that...
Unsupervised image clustering is a challenging and often ill-posed problem. Existing image descripto...
As image collections become ever larger, effective access to their content requires a meaningful cat...
In many machine learning domains (e.g. text processing, bioinformatics), there is a large supply of ...
International audienceIn our data driven world, clustering is of major importance to help end-users ...
Semi-supervised clustering methods incorporate a limited amount of supervision into the clustering p...
Due to strong demand for the ability to enforce top-down struc-ture on clustering results, semi-supe...
Clustering requires the user to define a distance metric, select a clustering algorithm, and set the...
Semi-supervised clustering methods incorporate a limited amount of supervision into the clustering p...
Semi-supervised clustering methods incorporate a limited amount of supervision into the clustering p...
A number of clustering algorithms have been proposed for use in tasks where a limited degree of supe...
A number of clustering algorithms have been proposed for use in tasks where a limited degree of supe...
In many machine learning domains, there is a large supply of unlabeled data but limited labeled data...
Clustering images has been an interesting problem for computer vision and machine learning researche...
In this paper, we propose a method of cluster-ing large image sets using human input. We assume an a...
One of the key tools to gain knowledge from data is clustering: identifying groups of instances that...
Unsupervised image clustering is a challenging and often ill-posed problem. Existing image descripto...
As image collections become ever larger, effective access to their content requires a meaningful cat...
In many machine learning domains (e.g. text processing, bioinformatics), there is a large supply of ...
International audienceIn our data driven world, clustering is of major importance to help end-users ...
Semi-supervised clustering methods incorporate a limited amount of supervision into the clustering p...
Due to strong demand for the ability to enforce top-down struc-ture on clustering results, semi-supe...
Clustering requires the user to define a distance metric, select a clustering algorithm, and set the...
Semi-supervised clustering methods incorporate a limited amount of supervision into the clustering p...
Semi-supervised clustering methods incorporate a limited amount of supervision into the clustering p...
A number of clustering algorithms have been proposed for use in tasks where a limited degree of supe...
A number of clustering algorithms have been proposed for use in tasks where a limited degree of supe...
In many machine learning domains, there is a large supply of unlabeled data but limited labeled data...