We present a method for object detection in a multi view 3D model. We use highly overlapping views, geometric data, and semantic surface classification in order to boost existing 2D algorithms. Specifically, a 3D model is computed from the overlapping views, and the model is segmented into semantic labels using height information, color and planar qualities. 2D detector is run on all images and then detections are mapped into 3D via the model. The detections are clustered in 3D and represented by 3D boxes. Finally, the detections, visibility maps and semantic labels are combined using a Support Vector Machine to achieve a more robust object detector
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...
This thesis presents and evaluates different methods to semantically segment 3D-models by rendered 2...
We present a method for object detection in a multi view 3D model. We use highly overlapping views, ...
International audienceThis paper presents a new approach for multi-view object class detection. Appe...
International audienceThis paper presents a new approach for multi-view object class detection. Appe...
Abstract. There is an increasing interest in semantically annotated 3D models, e.g. of cities. The t...
There is an increasing interest in semantically annotated 3D models, e.g. of cities. The typical app...
We present a dense reconstruction approach that overcomes the drawbacks of traditional multiview ste...
International audienceWe propose to jointly learn multi-view geometry and warping between views of t...
International audienceWe propose to jointly learn multi-view geometry and warping between views of t...
International audienceWe propose to jointly learn multi-view geometry and warping between views of t...
This paper addresses the problem of category-level 3D object detection. Given a monocular image, our...
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...
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...
This thesis presents and evaluates different methods to semantically segment 3D-models by rendered 2...
We present a method for object detection in a multi view 3D model. We use highly overlapping views, ...
International audienceThis paper presents a new approach for multi-view object class detection. Appe...
International audienceThis paper presents a new approach for multi-view object class detection. Appe...
Abstract. There is an increasing interest in semantically annotated 3D models, e.g. of cities. The t...
There is an increasing interest in semantically annotated 3D models, e.g. of cities. The typical app...
We present a dense reconstruction approach that overcomes the drawbacks of traditional multiview ste...
International audienceWe propose to jointly learn multi-view geometry and warping between views of t...
International audienceWe propose to jointly learn multi-view geometry and warping between views of t...
International audienceWe propose to jointly learn multi-view geometry and warping between views of t...
This paper addresses the problem of category-level 3D object detection. Given a monocular image, our...
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...
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...
This thesis presents and evaluates different methods to semantically segment 3D-models by rendered 2...