International audienceThis paper presents a new approach for multi-view object class detection. Appearance and geometry are treated as separate learning tasks with different training data. Our approach uses a part model which discriminatively learns the object appearance with spatial pyramids from a database of real images, and encodes the 3D geometry of the object class with a generative representation built from a database of synthetic models. The geometric information is linked to the 2D training data and allows to perform an approximate 3D pose estimation for generic object classes. The pose estimation provides an efficient method to evaluate the likelihood of groups of 2D part detections with respect to a full 3D geometry model in orde...
International audienceWe present a novel system for generic object class detection. In contrast to m...
We propose a novel probabilistic framework for learning visual models of 3D object categories by com...
International audienceWe present a novel system for generic object class detection. In contrast to m...
International audienceThis paper presents a new approach for multi-view object class detection. Appe...
This dissertation aims at extending object class detection and pose estimation tasks on single 2D im...
This dissertation aims at extending object class detection and pose estimation tasks on single 2D im...
This dissertation aims at extending object class detection and pose estimation tasks on single 2D im...
Recognizing 3D objects from arbitrary view points is one of the most fundamental problems in compute...
Existing work on multi-class object detection usually does not cover the entire viewsphere of each c...
Recognizing 3D objects from arbitrary view points is one of the most fundamental problems in compute...
Existing work on multi-class object detection usually does not cover the entire viewsphere of each c...
Existing work on multi-class object detection usually does not cover the entire viewsphere of each c...
Recognizing 3D objects from arbitrary view points is one of the most fundamental problems in compute...
We present a method for object detection in a multi view 3D model. We use highly overlapping views, ...
We present a method for object detection in a multi view 3D model. We use highly overlapping views, ...
International audienceWe present a novel system for generic object class detection. In contrast to m...
We propose a novel probabilistic framework for learning visual models of 3D object categories by com...
International audienceWe present a novel system for generic object class detection. In contrast to m...
International audienceThis paper presents a new approach for multi-view object class detection. Appe...
This dissertation aims at extending object class detection and pose estimation tasks on single 2D im...
This dissertation aims at extending object class detection and pose estimation tasks on single 2D im...
This dissertation aims at extending object class detection and pose estimation tasks on single 2D im...
Recognizing 3D objects from arbitrary view points is one of the most fundamental problems in compute...
Existing work on multi-class object detection usually does not cover the entire viewsphere of each c...
Recognizing 3D objects from arbitrary view points is one of the most fundamental problems in compute...
Existing work on multi-class object detection usually does not cover the entire viewsphere of each c...
Existing work on multi-class object detection usually does not cover the entire viewsphere of each c...
Recognizing 3D objects from arbitrary view points is one of the most fundamental problems in compute...
We present a method for object detection in a multi view 3D model. We use highly overlapping views, ...
We present a method for object detection in a multi view 3D model. We use highly overlapping views, ...
International audienceWe present a novel system for generic object class detection. In contrast to m...
We propose a novel probabilistic framework for learning visual models of 3D object categories by com...
International audienceWe present a novel system for generic object class detection. In contrast to m...