Metric learning aims to measure the similarity among samples while using an optimal distance metric for learning tasks. Metric learning methods, which generally use a linear projection, are limited in solving real-world problems demonstrating non-linear characteristics. Kernel approaches are utilized in metric learning to address this problem. In recent years, deep metric learning, which provides a better solution for nonlinear data through activation functions, has attracted researchers' attention in many different areas. This article aims to reveal the importance of deep metric learning and the problems dealt with in this field in the light of recent studies. As far as the research conducted in this field are concerned, most existing stud...
We propose a triplet network design which generates vectors representing student understanding. The ...
Abstract—This paper introduces a supervised metric learn-ing algorithm, called kernel density metric...
\u3cp\u3eLearning a distance metric provides solutions to many problems where the data exists in a h...
International audienceSimilarity between objects plays an important role in both human cognitive pro...
Metric learning aims to learn a distance function to measure the similarity of samples, which plays ...
The need for appropriate ways to measure the distance or similarity between data is ubiquitous in ma...
A typical machine learning algorithm takes advantage of training data to discover patterns among obs...
With the emergence of deep learning, metric learning has gained significant popularity in numerous m...
Metric Learning: A Review presents an overview of existing research in metric learning, including re...
International audienceSimilarity metric learning models the general semantic similarities and distan...
The key idea of Deep Metric Learning (DML) is to learn a set of hierarchical non-linear mappings usi...
Metric learning especially deep metric learning has been widely developed for large-scale image inpu...
We have witnessed rapid evolution of deep neural network architecture design in the past years. Thes...
© 2017 IEEE. Learning image similarity metrics in an end-to-end fashion with deep networks has demon...
Learning a distance metric from the given training samples plays a crucial role in many machine lear...
We propose a triplet network design which generates vectors representing student understanding. The ...
Abstract—This paper introduces a supervised metric learn-ing algorithm, called kernel density metric...
\u3cp\u3eLearning a distance metric provides solutions to many problems where the data exists in a h...
International audienceSimilarity between objects plays an important role in both human cognitive pro...
Metric learning aims to learn a distance function to measure the similarity of samples, which plays ...
The need for appropriate ways to measure the distance or similarity between data is ubiquitous in ma...
A typical machine learning algorithm takes advantage of training data to discover patterns among obs...
With the emergence of deep learning, metric learning has gained significant popularity in numerous m...
Metric Learning: A Review presents an overview of existing research in metric learning, including re...
International audienceSimilarity metric learning models the general semantic similarities and distan...
The key idea of Deep Metric Learning (DML) is to learn a set of hierarchical non-linear mappings usi...
Metric learning especially deep metric learning has been widely developed for large-scale image inpu...
We have witnessed rapid evolution of deep neural network architecture design in the past years. Thes...
© 2017 IEEE. Learning image similarity metrics in an end-to-end fashion with deep networks has demon...
Learning a distance metric from the given training samples plays a crucial role in many machine lear...
We propose a triplet network design which generates vectors representing student understanding. The ...
Abstract—This paper introduces a supervised metric learn-ing algorithm, called kernel density metric...
\u3cp\u3eLearning a distance metric provides solutions to many problems where the data exists in a h...