In this paper, we present a general guideline to find a better distance measure for similarity estimation based on statistical analysis of distribution models and distance functions. A new set of distance measures are derived from the harmonic distance, the geometric distance, and their generalized variants according to the Maximum Likelihood theory. These measures can provide a more accurate feature model than the classical Euclidean and Manhattan distances. We also find that the feature elements are often from heterogeneous sources that may have different influence on similarity estimation. Therefore, the assumption of single isotropic distribution model is often inappropriate. To alleviate this problem, we use a boosted distance measure ...
AbstractSimilarity and dissimilarity measures are widely used in many research areas and application...
International audienceSimilarity metric learning models the general semantic similarities and distan...
In this paper, we propose a novel approach to learning robust ground distance functions of the Earth...
Distance metric is widely used in similarity estimation. In this paper we find that the most popular...
Much like in other modeling disciplines does the distance metric used (a measure for dissimilarity) ...
Assessing similarity between features is a key step in object recognition and scene categorization t...
Much like in other modeling disciplines does the distance metric used (a measure for dissimilarity) ...
Similarity between images in image retrieval is measured by computing distances between feature vect...
International audienceThere are many measures of dissimilarity that, depending on the application, d...
International audienceThere are many measures of dissimilarity that, depending on the application, d...
We consider the problem of learning a similarity function from a set of positive equivalence constra...
International audienceThere are many measures of dissimilarity that, depending on the application, d...
International audienceThere are many measures of dissimilarity that, depending on the application, d...
The Euclidean metric is frequently used in Computer Vision, mostly ad-hoc without any justification....
International audienceComparing images is essential to several computer vision problems, like image ...
AbstractSimilarity and dissimilarity measures are widely used in many research areas and application...
International audienceSimilarity metric learning models the general semantic similarities and distan...
In this paper, we propose a novel approach to learning robust ground distance functions of the Earth...
Distance metric is widely used in similarity estimation. In this paper we find that the most popular...
Much like in other modeling disciplines does the distance metric used (a measure for dissimilarity) ...
Assessing similarity between features is a key step in object recognition and scene categorization t...
Much like in other modeling disciplines does the distance metric used (a measure for dissimilarity) ...
Similarity between images in image retrieval is measured by computing distances between feature vect...
International audienceThere are many measures of dissimilarity that, depending on the application, d...
International audienceThere are many measures of dissimilarity that, depending on the application, d...
We consider the problem of learning a similarity function from a set of positive equivalence constra...
International audienceThere are many measures of dissimilarity that, depending on the application, d...
International audienceThere are many measures of dissimilarity that, depending on the application, d...
The Euclidean metric is frequently used in Computer Vision, mostly ad-hoc without any justification....
International audienceComparing images is essential to several computer vision problems, like image ...
AbstractSimilarity and dissimilarity measures are widely used in many research areas and application...
International audienceSimilarity metric learning models the general semantic similarities and distan...
In this paper, we propose a novel approach to learning robust ground distance functions of the Earth...