International audienceWe propose a family of quasi-linear discriminants that outperform current large-margin methods in sliding window visual object detection and open set recognition tasks. In these tasks the classification problems are both numerically imbalanced-positive (object class) training and test windows are much rarer than negative (non-class) ones-and geometrically asymmetric-the positive samples typically form compact, visually-coherent groups while negatives are much more diverse, including anything at all that is not a well-centred sample from the target class. It is difficult to cover such negative classes using training samples , and doubly so in 'open set' applications where run-time negatives may stem from classes that we...
A canonical problem in computer vision is category recognition (e.g. find all instances of human fac...
In this paper we propose a new algorithm for learning polyhedral classifiers which we call as Polyce...
A combined shape descriptor for object recognition is presented, along with an offline and online le...
International audienceWe propose a family of quasi-linear discriminants that outperform current larg...
International audienceWe describe an efficient approach to visual object detection that uses short c...
International audienceAn object detector must detect and localize each instance of the object class ...
In this paper, an algorithm for finding piecewise linear boundaries between pattern classes is devel...
This paper describes a discriminatively trained, multiscale, deformable part model for object detect...
In this paper, a piecewise linear classifier based on polyhedral conic separation is developed. This...
We approach the task of object discrimination as that of learning efficient codes for each object ...
The topic of the thesis is visual object class recognition and detection in images. In the first par...
In this paper we propose a new algorithm for learning polyhedral classifiers. In contrast to existin...
International audienceNearest neighbour classifiers and related kernel methods often perform poorly ...
In this paper we propose a new algorithm for learning polyhedral classifiers. In contrast to existin...
In this paper, we present a non-symmetry and anti-packing object pattern representation model (NAM) ...
A canonical problem in computer vision is category recognition (e.g. find all instances of human fac...
In this paper we propose a new algorithm for learning polyhedral classifiers which we call as Polyce...
A combined shape descriptor for object recognition is presented, along with an offline and online le...
International audienceWe propose a family of quasi-linear discriminants that outperform current larg...
International audienceWe describe an efficient approach to visual object detection that uses short c...
International audienceAn object detector must detect and localize each instance of the object class ...
In this paper, an algorithm for finding piecewise linear boundaries between pattern classes is devel...
This paper describes a discriminatively trained, multiscale, deformable part model for object detect...
In this paper, a piecewise linear classifier based on polyhedral conic separation is developed. This...
We approach the task of object discrimination as that of learning efficient codes for each object ...
The topic of the thesis is visual object class recognition and detection in images. In the first par...
In this paper we propose a new algorithm for learning polyhedral classifiers. In contrast to existin...
International audienceNearest neighbour classifiers and related kernel methods often perform poorly ...
In this paper we propose a new algorithm for learning polyhedral classifiers. In contrast to existin...
In this paper, we present a non-symmetry and anti-packing object pattern representation model (NAM) ...
A canonical problem in computer vision is category recognition (e.g. find all instances of human fac...
In this paper we propose a new algorithm for learning polyhedral classifiers which we call as Polyce...
A combined shape descriptor for object recognition is presented, along with an offline and online le...