In the past few years there has been a growing inter-est on geometric frameworks to learn supervised classifi-cation models on Riemannian manifolds [31, 27]. A pop-ular framework, valid over any Riemannian manifold, was proposed in [31] for binary classification. Once moving from binary to multi-class classification this paradigm is not valid anymore, due to the spread of multiple positive classes on the manifold [27]. It is then natural to ask whether the multi-class paradigm could be extended to operate on a large class of Riemannian manifolds. We propose a math-ematically well-founded classification paradigm that allows to extend the work in [31] to multi-class models, taking into account the structure of the space. The idea is to projec...
It is a significant challenge to classify images with multiple labels by using only a small number o...
In this paper, we propose RiemannianFlow, a deep generative model that allows robots to learn comple...
Perceptual manifolds arise when a neural population responds to an ensemble of sensory signals assoc...
In video surveillance, classication of visual data can be very hard, due to the scarce resolution an...
Classical machine learning techniques provide effective methods for analyzing data when the paramete...
The importance of wild video based image set recognition is becoming monotonically increasing. Howev...
Manifold learning has become a vital tool in data driven methods for interpretation of video, motion...
Manifold learning has become a vital tool in data driven methods for interpretation of video, motion...
This research is devoted to the problem of overfitting in Machine Learning and Pattern Recognition. ...
In video surveillance, classification of visual data can be very hard, due to the scarce resolution ...
Abstract—We present a learning method for classification using multiple manifold-valued features. Ma...
Manifold models provide low-dimensional representations that are useful for analyzing and classifyin...
Several branches of modern computer vision research make heavy use of machine learning techniques. M...
In this work, we return to the underlying mathematical definition of a manifold and directly charact...
224 pagesAlthough machine learning researchers have introduced a plethora of useful constructions fo...
It is a significant challenge to classify images with multiple labels by using only a small number o...
In this paper, we propose RiemannianFlow, a deep generative model that allows robots to learn comple...
Perceptual manifolds arise when a neural population responds to an ensemble of sensory signals assoc...
In video surveillance, classication of visual data can be very hard, due to the scarce resolution an...
Classical machine learning techniques provide effective methods for analyzing data when the paramete...
The importance of wild video based image set recognition is becoming monotonically increasing. Howev...
Manifold learning has become a vital tool in data driven methods for interpretation of video, motion...
Manifold learning has become a vital tool in data driven methods for interpretation of video, motion...
This research is devoted to the problem of overfitting in Machine Learning and Pattern Recognition. ...
In video surveillance, classification of visual data can be very hard, due to the scarce resolution ...
Abstract—We present a learning method for classification using multiple manifold-valued features. Ma...
Manifold models provide low-dimensional representations that are useful for analyzing and classifyin...
Several branches of modern computer vision research make heavy use of machine learning techniques. M...
In this work, we return to the underlying mathematical definition of a manifold and directly charact...
224 pagesAlthough machine learning researchers have introduced a plethora of useful constructions fo...
It is a significant challenge to classify images with multiple labels by using only a small number o...
In this paper, we propose RiemannianFlow, a deep generative model that allows robots to learn comple...
Perceptual manifolds arise when a neural population responds to an ensemble of sensory signals assoc...