Aimed at the problem of instability and deviation of multiple training model in limited samples, this paper proposes a method of distance metric learning based on the Gaussian mixture model, which can solve this problem more reasonably by dividing the dataset. Distance metric learning relies on the excellent feature extraction capabilities of deep neural networks to embed the original data into the new metric space. Then, based on the deep features, the Gaussian mixture model is used to cluster the analyzer and estimate the sample distribution in this new metric space. Finally, according to the characteristics of sample distribution, stratified sampling is used to reasonably divide the data. The research shows that the method proposed can b...
Traditional distance metric learning with side in-formation usually formulates the objectives using ...
A typical machine learning algorithm takes advantage of training data to discover patterns among obs...
Metric learning aims to measure the similarity among samples while using an optimal distance metric ...
Abstract. The contributions of this work are threefold. First, various metric learning techniques ar...
Mahalanobis Metric Learning (MML) has been actively studied recently in machine learning community. ...
Over the past decades, distance metric learning has attracted a lot of interest in machine learning ...
Distance metric plays an important role in many machine learning tasks. The distance between samples...
Much like in other modeling disciplines does the distance metric used (a measure for dissimilarity) ...
International audienceThe majority of all commonly used machine learning methods can not be applied ...
© 2016 IEEE. Distance metric learning plays an important role in many applications, such as classifi...
Distance metric learning (DML) is a critical factor for image analysis and pattern recognition. To l...
The need for appropriate ways to measure the distance or similarity between data is ubiquitous in ma...
Distance metric learning (DML) is a critical factor for image analysis and pattern recognition. To l...
In this paper, we present a novel two-stage metric learning algorithm. We first map each learning in...
Many machine learning and pattern recognition algorithms rely on a distance metric. Instead of choos...
Traditional distance metric learning with side in-formation usually formulates the objectives using ...
A typical machine learning algorithm takes advantage of training data to discover patterns among obs...
Metric learning aims to measure the similarity among samples while using an optimal distance metric ...
Abstract. The contributions of this work are threefold. First, various metric learning techniques ar...
Mahalanobis Metric Learning (MML) has been actively studied recently in machine learning community. ...
Over the past decades, distance metric learning has attracted a lot of interest in machine learning ...
Distance metric plays an important role in many machine learning tasks. The distance between samples...
Much like in other modeling disciplines does the distance metric used (a measure for dissimilarity) ...
International audienceThe majority of all commonly used machine learning methods can not be applied ...
© 2016 IEEE. Distance metric learning plays an important role in many applications, such as classifi...
Distance metric learning (DML) is a critical factor for image analysis and pattern recognition. To l...
The need for appropriate ways to measure the distance or similarity between data is ubiquitous in ma...
Distance metric learning (DML) is a critical factor for image analysis and pattern recognition. To l...
In this paper, we present a novel two-stage metric learning algorithm. We first map each learning in...
Many machine learning and pattern recognition algorithms rely on a distance metric. Instead of choos...
Traditional distance metric learning with side in-formation usually formulates the objectives using ...
A typical machine learning algorithm takes advantage of training data to discover patterns among obs...
Metric learning aims to measure the similarity among samples while using an optimal distance metric ...