peer reviewedA generic method for supervised classification of structured objects is presented. The approach induces a classifier by (i) deriving a surrogate dataset from a pre-classified dataset of structured objects, by segmenting them into pieces, (ii) learning a model relating pieces to object-classes, (iii) classifying structured objects by combining predictions made for their pieces. The segmentation allows to exploit local information and can be adapted to inject invariances into the resulting classifier. The framework is illustrated on practical sequence, time-series and image classification problems
Despite the fact that complex visual scenes contain multiple, overlapping objects, people perform ob...
Learning mappings between arbitrary structured input and output variables is a fundamental problem i...
A key challenge in machine learning is to automatically extract relevant feature representations of ...
A generic method for supervised classification of structured objects is presented. The approach indu...
National audienceA generic method for supervised classification of structured objects is presented. ...
peer reviewedThis paper presents a novel, generic, scalable, autonomous, and flexible supervised lea...
In this paper we derive an efficient algorithm to learn the parameters of structured predictors in g...
The ability to learn meaningful representations of complex, high-dimensional data like image and tex...
In structured prediction, target objects have rich internal structure which does not factorize into ...
This paper presents a novel method for detecting and localizing objects of a visual category in clut...
With the development of modern digitization, increasingly more data emerge in almost all areas. It i...
A cluster analysis task has to identify the grouping trends of data, to decide on the sound clusters...
Many scene understanding tasks are formulated as a labelling problem that tries to assign a label to...
Which one comes first: segmentation or recognition? We propose a unified framework for carrying out ...
Learning mappings between arbitrary structured input and output variables is a fundamental problem i...
Despite the fact that complex visual scenes contain multiple, overlapping objects, people perform ob...
Learning mappings between arbitrary structured input and output variables is a fundamental problem i...
A key challenge in machine learning is to automatically extract relevant feature representations of ...
A generic method for supervised classification of structured objects is presented. The approach indu...
National audienceA generic method for supervised classification of structured objects is presented. ...
peer reviewedThis paper presents a novel, generic, scalable, autonomous, and flexible supervised lea...
In this paper we derive an efficient algorithm to learn the parameters of structured predictors in g...
The ability to learn meaningful representations of complex, high-dimensional data like image and tex...
In structured prediction, target objects have rich internal structure which does not factorize into ...
This paper presents a novel method for detecting and localizing objects of a visual category in clut...
With the development of modern digitization, increasingly more data emerge in almost all areas. It i...
A cluster analysis task has to identify the grouping trends of data, to decide on the sound clusters...
Many scene understanding tasks are formulated as a labelling problem that tries to assign a label to...
Which one comes first: segmentation or recognition? We propose a unified framework for carrying out ...
Learning mappings between arbitrary structured input and output variables is a fundamental problem i...
Despite the fact that complex visual scenes contain multiple, overlapping objects, people perform ob...
Learning mappings between arbitrary structured input and output variables is a fundamental problem i...
A key challenge in machine learning is to automatically extract relevant feature representations of ...