Most approaches to classifier learning for structured objects (such as images or sequences) are based on probabilistic generative models. On the other hand, state-of-the-art classifiers for vectorial data are learned discrim-inatively. In recent years, these two dual paradigms have been combined via the use of generative embeddings (of which the Fisher kernel is arguably the best known example); these embeddings are mappings from the object space into a fixed dimensional score space, induced by a generative model learned from data, on which a (maybe kernel-based) discriminative approach can then be used. This paper proposes a new semi-parametric approach to build generative embeddings for classification of magnetic resonance images (MRI). B...
The aim of this article is to propose an integrated framework for classifying and describing pattern...
In this thesis, we propose a method that can be used to extract biomarkers from medical images towar...
Abstract We propose a novel optimization framework that integrates imaging and genetics data for sim...
Classical approaches to learn classifiers for structured objects (e.g., images, sequences) use gener...
lassical methods to obtain classifiers for structured objects (e.g., sequences, images) are based on...
Several popular classification algorithms used to segment magnetic resonance brain images assume tha...
Several popular classification algorithms used to segment magnetic resonance brain images assume tha...
Most approaches to learn classifiers for structured objects (e.g., images) use generative models in ...
Many approaches to learning classi¯ers for structured objects (e.g., shapes) use generative models ...
We propose a novel optimization framework that integrates imaging and genetics data for simultaneous...
Schizophrenia research based on magnetic resonance imaging(MRI) traditionally relies on the volumetr...
Most approaches to learn classifiers for structured objects (e.g., images) use generative models in...
Neuroimaging datasets often have a very large number of voxels and a very small number of training c...
Within the field of pattern classification, the Fisher kernel is a powerful framework which combines...
Neuroimaging datasets often have a very large number of voxels and a very small number of training c...
The aim of this article is to propose an integrated framework for classifying and describing pattern...
In this thesis, we propose a method that can be used to extract biomarkers from medical images towar...
Abstract We propose a novel optimization framework that integrates imaging and genetics data for sim...
Classical approaches to learn classifiers for structured objects (e.g., images, sequences) use gener...
lassical methods to obtain classifiers for structured objects (e.g., sequences, images) are based on...
Several popular classification algorithms used to segment magnetic resonance brain images assume tha...
Several popular classification algorithms used to segment magnetic resonance brain images assume tha...
Most approaches to learn classifiers for structured objects (e.g., images) use generative models in ...
Many approaches to learning classi¯ers for structured objects (e.g., shapes) use generative models ...
We propose a novel optimization framework that integrates imaging and genetics data for simultaneous...
Schizophrenia research based on magnetic resonance imaging(MRI) traditionally relies on the volumetr...
Most approaches to learn classifiers for structured objects (e.g., images) use generative models in...
Neuroimaging datasets often have a very large number of voxels and a very small number of training c...
Within the field of pattern classification, the Fisher kernel is a powerful framework which combines...
Neuroimaging datasets often have a very large number of voxels and a very small number of training c...
The aim of this article is to propose an integrated framework for classifying and describing pattern...
In this thesis, we propose a method that can be used to extract biomarkers from medical images towar...
Abstract We propose a novel optimization framework that integrates imaging and genetics data for sim...