International audienceIn this paper we propose and evaluate an algorithm that learns a similarity measure for comparing never seen objects. The measure is learned from pairs of training images labeled "same" or "different". This is far less informative than the commonly used individual image labels (e.g. "car model X"), but it is cheaper to obtain. The proposed algorithm learns the characteristic differences between local descriptors sampled from pairs of "same" and "different" images. These differences are vector quantized by an ensemble of extremely randomized binary trees, and the similarity measure is computed from the quantized differences. The extremely randomized trees are fast to learn, robust due to the redundant information they c...
Visual search for a target is affected by visual similarity. Research on visual similarity has prima...
Abstract. The aim of this paper is to present a dissimilarity measure strategy by which a new philos...
Visual search for a target is affected by visual similarity. Research on visual similarity has prima...
International audienceIn this paper we propose and evaluate an algorithm that learns a similarity me...
International audienceComparing images is essential to several computer vision problems, like image ...
Measuring image similarity is a central topic in computer vision. In this paper, we propose to measu...
Measuring image similarity is a central topic in computer vision. In this paper, we propose to measu...
Abstract. Many computer vision applications require computing structure and feature correspondence a...
Sets of local features that are invariant to common image transformations are an effective represent...
Learning a measure of similarity between pairs of objects is a fundamental prob-lem in machine learn...
Learning similarity measure from relevance feedback has become a promising way to enhance the image ...
International audienceSimilarity metric learning models the general semantic similarities and distan...
Adopting a measure is essential in many multimedia applications. Recently, distance learning is beco...
vision.cornell.edu Current similarity-based approaches to interactive fine-grained categorization re...
We present an approach for measuring similarity between visual entities (images or videos) based on ...
Visual search for a target is affected by visual similarity. Research on visual similarity has prima...
Abstract. The aim of this paper is to present a dissimilarity measure strategy by which a new philos...
Visual search for a target is affected by visual similarity. Research on visual similarity has prima...
International audienceIn this paper we propose and evaluate an algorithm that learns a similarity me...
International audienceComparing images is essential to several computer vision problems, like image ...
Measuring image similarity is a central topic in computer vision. In this paper, we propose to measu...
Measuring image similarity is a central topic in computer vision. In this paper, we propose to measu...
Abstract. Many computer vision applications require computing structure and feature correspondence a...
Sets of local features that are invariant to common image transformations are an effective represent...
Learning a measure of similarity between pairs of objects is a fundamental prob-lem in machine learn...
Learning similarity measure from relevance feedback has become a promising way to enhance the image ...
International audienceSimilarity metric learning models the general semantic similarities and distan...
Adopting a measure is essential in many multimedia applications. Recently, distance learning is beco...
vision.cornell.edu Current similarity-based approaches to interactive fine-grained categorization re...
We present an approach for measuring similarity between visual entities (images or videos) based on ...
Visual search for a target is affected by visual similarity. Research on visual similarity has prima...
Abstract. The aim of this paper is to present a dissimilarity measure strategy by which a new philos...
Visual search for a target is affected by visual similarity. Research on visual similarity has prima...