International audienceWe propose a generative model that codes the geometry and appearance of generic visual object categories as a loose hierarchy of parts, with probabilistic spatial relations linking parts to subparts, soft assignment of subparts to parts, and scale invariant keypoint based local features at the lowest level of the hierarchy. The method is designed to efficiently handle categories containing hundreds of redundant local features, such as those returned by current key-point detectors. This robustness allows it to outperform constellation style models, despite their stronger spatial models. The model is initialized by robust bottom-up voting over location-scale pyramids, and optimized by expectation-maximization. Training i...
This paper proposes a novel hierarchical compositional representation of 3D shape that can accommoda...
This paper proposes a novel hierarchical compositional representation of 3D shape that can accommoda...
This thesis aims at learning and predicting the fine-grained structure of visual object categories g...
International audienceWe propose a generative model that codes the geometry and appearance of generi...
With the growing interest in object categorization vari-ous methods have emerged that perform well i...
This paper proposes a novel approach to constructing a hierarchical representation of visual input t...
We describe a hierarchical probabilistic model for the detection and recognition of objects in clutt...
Humans can categorize objects in complex natural scenes within 100-150 ms. This amazing ability of r...
This paper presents a new approach for the object categorization problem. Our model is based on the ...
This paper presents a new approach for the object categorization problem. Our model is based on the ...
We describe an unsupervised, probabilistic method for learning visual feature hierarchies. Starting ...
This thesis aims at learning and predicting the fine-grained structure of visual object categories g...
This paper proposes a novel hierarchical compositional representation of 3D shape that can accommoda...
This paper proposes a novel hierarchical compositional representation of 3D shape that can accommoda...
This paper proposes a novel hierarchical compositional representation of 3D shape that can accommoda...
This paper proposes a novel hierarchical compositional representation of 3D shape that can accommoda...
This paper proposes a novel hierarchical compositional representation of 3D shape that can accommoda...
This thesis aims at learning and predicting the fine-grained structure of visual object categories g...
International audienceWe propose a generative model that codes the geometry and appearance of generi...
With the growing interest in object categorization vari-ous methods have emerged that perform well i...
This paper proposes a novel approach to constructing a hierarchical representation of visual input t...
We describe a hierarchical probabilistic model for the detection and recognition of objects in clutt...
Humans can categorize objects in complex natural scenes within 100-150 ms. This amazing ability of r...
This paper presents a new approach for the object categorization problem. Our model is based on the ...
This paper presents a new approach for the object categorization problem. Our model is based on the ...
We describe an unsupervised, probabilistic method for learning visual feature hierarchies. Starting ...
This thesis aims at learning and predicting the fine-grained structure of visual object categories g...
This paper proposes a novel hierarchical compositional representation of 3D shape that can accommoda...
This paper proposes a novel hierarchical compositional representation of 3D shape that can accommoda...
This paper proposes a novel hierarchical compositional representation of 3D shape that can accommoda...
This paper proposes a novel hierarchical compositional representation of 3D shape that can accommoda...
This paper proposes a novel hierarchical compositional representation of 3D shape that can accommoda...
This thesis aims at learning and predicting the fine-grained structure of visual object categories g...