© 2017 IEEE. Learning image similarity metrics in an end-to-end fashion with deep networks has demonstrated excellent results on tasks such as clustering and retrieval. However, current methods, all focus on a very local view of the data. In this paper, we propose a new metric learning scheme, based on structured prediction, that is aware of the global structure of the embedding space, and which is designed to optimize a clustering quality metric (NMI). We show state of the art performance on standard datasets, such as CUB200-2011 [37], Cars196 [18], and Stanford online products [30] on NMI and R@K evaluation metrics
In mining graphical data the default Euclidean distance is often used as a notion of similarity. How...
To solve deep metric learning problems and producing feature embeddings, current methodologies will ...
Many algorithms rely critically on being given a good metric over their inputs. For instance, data c...
© 2017 IEEE. Learning image similarity metrics in an end-to-end fashion with deep networks has demon...
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 ...
The need for appropriate ways to measure the distance or similarity between data is ubiquitous in ma...
With the emergence of deep learning, metric learning has gained significant popularity in numerous m...
In the current Internet world, the numbers of digital images are growing exponentially. As a result,...
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 ...
International audienceClustering in high dimension spaces is a difficult task; the usual distance me...
In this thesis work, we propose a Deep Metric Learning method via learnable distance to solve image ...
Many algorithms rely critically on being given a good metric over their inputs. For instance, data ...
International audienceSimilarity metric learning models the general semantic similarities and distan...
In mining graphical data the default Euclidean distance is often used as a notion of similarity. How...
To solve deep metric learning problems and producing feature embeddings, current methodologies will ...
Many algorithms rely critically on being given a good metric over their inputs. For instance, data c...
© 2017 IEEE. Learning image similarity metrics in an end-to-end fashion with deep networks has demon...
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 ...
The need for appropriate ways to measure the distance or similarity between data is ubiquitous in ma...
With the emergence of deep learning, metric learning has gained significant popularity in numerous m...
In the current Internet world, the numbers of digital images are growing exponentially. As a result,...
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 ...
International audienceClustering in high dimension spaces is a difficult task; the usual distance me...
In this thesis work, we propose a Deep Metric Learning method via learnable distance to solve image ...
Many algorithms rely critically on being given a good metric over their inputs. For instance, data ...
International audienceSimilarity metric learning models the general semantic similarities and distan...
In mining graphical data the default Euclidean distance is often used as a notion of similarity. How...
To solve deep metric learning problems and producing feature embeddings, current methodologies will ...
Many algorithms rely critically on being given a good metric over their inputs. For instance, data c...