Local learning of sparse image models has proved to be very effective to solve inverse problems in many computer vision applications. To learn such models, the data samples are often clustered using the K-means algorithm with the Euclidean distance as a dissimilarity metric. However, the Euclidean distance may not always be a good dissimilarity measure for comparing data samples lying on a manifold. In this paper, we propose two algorithms for determining a local subset of training samples from which a good local model can be computed for reconstructing a given input test sample, where we consider the underlying geometry of the data. The first algorithm, called adaptive geometry-driven nearest neighbor search (AGNN), is an adaptive scheme, ...
Many machine learning algorithms for clustering or dimensionality re-duction take as input a cloud o...
The goal of learning-based image super resolution (SR) is to generate a plausible and visually pleas...
Neighbor embedding algorithm has been widely used in example-based super-resolution reconstruction f...
Until now, neighbor-embedding-based (NE) algorithms for super-resolution (SR) have carried out two i...
Image super-resolution refers to the process by which a higher-resolution enhanced image is synthesi...
Existing multi-model approaches for image set classifica-tion extract local models by clustering eac...
Until now, neighbor-embedding-based (NE) algorithms for super-resolution (SR) have carried out two i...
Image clustering methods are efficient tools for applications such as content-based image retrieval ...
algorithms for super resolution (SR) have carried out two independent processes to synthesize high r...
We consider the problem of selecting a subset of the dimensions of an image manifold that best prese...
Arnonkijpanich B, Hasenfuss A, Hammer B. Local matrix learning in clustering and applications for ma...
In computer vision, objects such as local features, images and video sequences are often represented...
International audienceIn case of insufficient data samples in highdimensional classification problem...
We study the problem of learning local metrics for nearest neighbor classification. Most previous wo...
Neighbor embedding algorithm has been widely used in example-based super-resolution reconstruction f...
Many machine learning algorithms for clustering or dimensionality re-duction take as input a cloud o...
The goal of learning-based image super resolution (SR) is to generate a plausible and visually pleas...
Neighbor embedding algorithm has been widely used in example-based super-resolution reconstruction f...
Until now, neighbor-embedding-based (NE) algorithms for super-resolution (SR) have carried out two i...
Image super-resolution refers to the process by which a higher-resolution enhanced image is synthesi...
Existing multi-model approaches for image set classifica-tion extract local models by clustering eac...
Until now, neighbor-embedding-based (NE) algorithms for super-resolution (SR) have carried out two i...
Image clustering methods are efficient tools for applications such as content-based image retrieval ...
algorithms for super resolution (SR) have carried out two independent processes to synthesize high r...
We consider the problem of selecting a subset of the dimensions of an image manifold that best prese...
Arnonkijpanich B, Hasenfuss A, Hammer B. Local matrix learning in clustering and applications for ma...
In computer vision, objects such as local features, images and video sequences are often represented...
International audienceIn case of insufficient data samples in highdimensional classification problem...
We study the problem of learning local metrics for nearest neighbor classification. Most previous wo...
Neighbor embedding algorithm has been widely used in example-based super-resolution reconstruction f...
Many machine learning algorithms for clustering or dimensionality re-duction take as input a cloud o...
The goal of learning-based image super resolution (SR) is to generate a plausible and visually pleas...
Neighbor embedding algorithm has been widely used in example-based super-resolution reconstruction f...