We introduce a robust framework for learning and fusing of orientation appearance models based on both texture and depth information for rigid object tracking. Our framework fuses data obtained from a standard visual camera and dense depth maps obtained by low-cost consumer depth cameras such as the Kinect. To combine these two completely different modalities, we propose to use features that do not depend on the data representation: angles. More specifically, our framework combines image gradient orientations as extracted from intensity images with the directions of surface normals computed from dense depth fields. We propose to capture the correlations between the obtained orientation appearance models using a fusion approach motivated by ...
For computer vision applications, one crucial step is the choice of a suitable representation of ima...
For computer vision applications, one crucial step is the choice of a suitable representation of ima...
This thesis considers the problem of active multi-view pose estimation of known objects from 3d rang...
We introduce a robust framework for learning and fusing of orientation appearance models based on bo...
We introduce a robust framework for learning and fusing of orientation appearance models based on bo...
We present a robust framework for learning and fusing different modalities for rigid object tracking...
Abstract — We present a robust framework for learning and fusing different modalities for rigid obje...
We present a robust framework for learning and fusing different modalities for rigid object tracking...
We introduce a robust framework for learning and fusing of orientation appearance models based on bo...
We present a robust framework for learning and fusing different modalities for rigid object tracking...
We propose a framework for learning robust, adaptive, appearance models to be used for motion-based ...
This article describes a probabilistic approach for improving the accuracy of general object pose es...
In this paper we present a new method for tracking rigid objects using a modified version of the Act...
This thesis considers the problem of active multi-view pose estimation of known objects from 3d rang...
International audienceThis paper presents a robust framework for simultaneously tracking rigid pose ...
For computer vision applications, one crucial step is the choice of a suitable representation of ima...
For computer vision applications, one crucial step is the choice of a suitable representation of ima...
This thesis considers the problem of active multi-view pose estimation of known objects from 3d rang...
We introduce a robust framework for learning and fusing of orientation appearance models based on bo...
We introduce a robust framework for learning and fusing of orientation appearance models based on bo...
We present a robust framework for learning and fusing different modalities for rigid object tracking...
Abstract — We present a robust framework for learning and fusing different modalities for rigid obje...
We present a robust framework for learning and fusing different modalities for rigid object tracking...
We introduce a robust framework for learning and fusing of orientation appearance models based on bo...
We present a robust framework for learning and fusing different modalities for rigid object tracking...
We propose a framework for learning robust, adaptive, appearance models to be used for motion-based ...
This article describes a probabilistic approach for improving the accuracy of general object pose es...
In this paper we present a new method for tracking rigid objects using a modified version of the Act...
This thesis considers the problem of active multi-view pose estimation of known objects from 3d rang...
International audienceThis paper presents a robust framework for simultaneously tracking rigid pose ...
For computer vision applications, one crucial step is the choice of a suitable representation of ima...
For computer vision applications, one crucial step is the choice of a suitable representation of ima...
This thesis considers the problem of active multi-view pose estimation of known objects from 3d rang...