We propose a method that substantially improves the efficiency of deep distance metric learning based on the optimization of the triplet loss function. One epoch of such training process based on a naive optimization of the triplet loss function has a run-time complexity O(N^³), where N is the number of training samples. Such optimization scales poorly, and the most common approach proposed to address this high complexity issue is based on sub-sampling the set of triplets needed for the training process. Another approach explored in the field relies on an ad-hoc linearization (in terms of N) of the triplet loss that introduces class centroids, which must be optimized using the whole training set for each mini-batch - this means that a na"iv...
Triplet networks are deep metric learners which learn to optimise a feature space using similarity k...
Metric learning is a technique in manifold learning to find a projection subspace for increasing and...
In this paper, we aim to learn a mapping (or embedding) from images to a compact binary space in whi...
Distance metric learning (DML) is to learn the embeddings where examples from the same class are clo...
© 2016 IEEE. Distance metric learning plays an important role in many applications, such as classifi...
To solve deep metric learning problems and producing feature embeddings, current methodologies will ...
Metric learning aims to measure the similarity among samples while using an optimal distance metric ...
\u3cp\u3eLearning a distance metric provides solutions to many problems where the data exists in a h...
Capturing visual similarity among images is the core of many computer vision and pattern recognition...
Metric learning aims to learn a distance metric such that semantically similar instances are pulled ...
How to select and weigh features has always been a difficult problem in many image processing and pa...
Motivated by large-scale multimedia applications we propose to learn mappings from high-dimensional ...
textA large number of machine learning algorithms are critically dependent on the underlying distanc...
This paper investigates sensitive minima in popular deep distance learning techniques such as Siames...
In this paper we study the problem of learning a low-rank (sparse) distance ma-trix. We propose a no...
Triplet networks are deep metric learners which learn to optimise a feature space using similarity k...
Metric learning is a technique in manifold learning to find a projection subspace for increasing and...
In this paper, we aim to learn a mapping (or embedding) from images to a compact binary space in whi...
Distance metric learning (DML) is to learn the embeddings where examples from the same class are clo...
© 2016 IEEE. Distance metric learning plays an important role in many applications, such as classifi...
To solve deep metric learning problems and producing feature embeddings, current methodologies will ...
Metric learning aims to measure the similarity among samples while using an optimal distance metric ...
\u3cp\u3eLearning a distance metric provides solutions to many problems where the data exists in a h...
Capturing visual similarity among images is the core of many computer vision and pattern recognition...
Metric learning aims to learn a distance metric such that semantically similar instances are pulled ...
How to select and weigh features has always been a difficult problem in many image processing and pa...
Motivated by large-scale multimedia applications we propose to learn mappings from high-dimensional ...
textA large number of machine learning algorithms are critically dependent on the underlying distanc...
This paper investigates sensitive minima in popular deep distance learning techniques such as Siames...
In this paper we study the problem of learning a low-rank (sparse) distance ma-trix. We propose a no...
Triplet networks are deep metric learners which learn to optimise a feature space using similarity k...
Metric learning is a technique in manifold learning to find a projection subspace for increasing and...
In this paper, we aim to learn a mapping (or embedding) from images to a compact binary space in whi...