The key idea of Deep Metric Learning (DML) is to learn a set of hierarchical non-linear mappings using deep neural networks, and then project the data samples into a new feature space for comparing or matching. As its name suggest, DML is a combination of deep learning and metric learning. Deep learning is a machine learning technique that requires the use of large neural networks. Metric learning is also a machine learning technique that utilizes distances between data points to undergo training and testing. Therefore, DML is a combination of these 2 techniques. DML is theorised to be an effective way to utilize a distance metric to learn the similarity between 2 data samples. This allows the model to predict if the data samples inputted i...
Deep Metric Learning (DML) is a group of techniques that aim to measure the similarity between objec...
Traditional class imbalanced learning algorithms require training data to be labeled, whereas semi-s...
Conventional metric learning methods usually assume that the training and test samples are captured ...
Distance metric learning (DML) aims to learn a distance metric better than Euclidean distance. It ha...
Metric learning aims to measure the similarity among samples while using an optimal distance metric ...
Distance Metric Learning (DML) seeks to learn a discriminative embedding where similar examples are ...
Distance metric learning (DML) is to learn the embeddings where examples from the same class are clo...
We have witnessed rapid evolution of deep neural network architecture design in the past years. Thes...
Metric learning especially deep metric learning has been widely developed for large-scale image inpu...
Deep metric learning techniques have been used for visual representation in various supervised and u...
This paper introduces a novel deep metric learning-based semi-supervised regression (DML-S2R) method...
Large data sets classification is widely used in many industrial applications. It is a challenging t...
Recent methods for deep metric learning have been focusing on designing different contrastive loss f...
International audienceOn account of its many successes in inference tasks and imaging applications, ...
Conventional metric learning methods usually assume that the training and test samples are captured ...
Deep Metric Learning (DML) is a group of techniques that aim to measure the similarity between objec...
Traditional class imbalanced learning algorithms require training data to be labeled, whereas semi-s...
Conventional metric learning methods usually assume that the training and test samples are captured ...
Distance metric learning (DML) aims to learn a distance metric better than Euclidean distance. It ha...
Metric learning aims to measure the similarity among samples while using an optimal distance metric ...
Distance Metric Learning (DML) seeks to learn a discriminative embedding where similar examples are ...
Distance metric learning (DML) is to learn the embeddings where examples from the same class are clo...
We have witnessed rapid evolution of deep neural network architecture design in the past years. Thes...
Metric learning especially deep metric learning has been widely developed for large-scale image inpu...
Deep metric learning techniques have been used for visual representation in various supervised and u...
This paper introduces a novel deep metric learning-based semi-supervised regression (DML-S2R) method...
Large data sets classification is widely used in many industrial applications. It is a challenging t...
Recent methods for deep metric learning have been focusing on designing different contrastive loss f...
International audienceOn account of its many successes in inference tasks and imaging applications, ...
Conventional metric learning methods usually assume that the training and test samples are captured ...
Deep Metric Learning (DML) is a group of techniques that aim to measure the similarity between objec...
Traditional class imbalanced learning algorithms require training data to be labeled, whereas semi-s...
Conventional metric learning methods usually assume that the training and test samples are captured ...