This paper addresses the problem of accurate and robust tracking of 3D human body pose from depth image sequences. Recovering the large number of degrees of freedom in human body movements from a depth image sequence is challenging due to the need to resolve the depth ambiguity caused by self-occlusions and the difficulty to recover from tracking failure. Human body poses could be estimated through model fitting using dense correspondences between depth data and an articulated human model (local optimization method). Although it usually achieves a high accuracy due to dense correspondences, it may fail to recover from tracking failure. Alternately, human pose may be reconstructed by detecting and tracking human body anatomical landmarks (ke...
<p>Reconstructing an arbitrary configuration of 3D points from their projection in an image is an il...
This paper presents a novel method for estimating the human body in 3D using depth sensor data. The ...
This thesis aims at investigating methodologies for estimating a human pose from a 3D point cloud th...
This paper proposes a novel human motion capture method that locates human body joint position and r...
Abstract This paper proposes a novel human motion capture method that locates human body joint posit...
(Invited Paper- CVPR 2011 special issue) Abstract—We describe two new approaches to human pose estim...
Reconstructing a three-dimensional representation of human motion in real-time constitutes an import...
Traditional approaches to upper body pose estimation using monocular vision rely on complex body mod...
We propose a generative framework for 3D human pose estimation that is able to operate on both indiv...
A major challenge in applying Bayesian tracking methods for tracking 3D human body pose is the high ...
Reconstructing an arbitrary configuration of 3D points from their projection in an image is an ill-p...
In this study we present a biologically motivated learning-based computer vision approach to human p...
International audienceThis paper describes a sparse Bayesian regression method for recovering 3D hum...
Many real-world applications require the estimation of human body joints for higher-level tasks as, ...
In this study we present a biologically motivated learning-based computer vision approach to human p...
<p>Reconstructing an arbitrary configuration of 3D points from their projection in an image is an il...
This paper presents a novel method for estimating the human body in 3D using depth sensor data. The ...
This thesis aims at investigating methodologies for estimating a human pose from a 3D point cloud th...
This paper proposes a novel human motion capture method that locates human body joint position and r...
Abstract This paper proposes a novel human motion capture method that locates human body joint posit...
(Invited Paper- CVPR 2011 special issue) Abstract—We describe two new approaches to human pose estim...
Reconstructing a three-dimensional representation of human motion in real-time constitutes an import...
Traditional approaches to upper body pose estimation using monocular vision rely on complex body mod...
We propose a generative framework for 3D human pose estimation that is able to operate on both indiv...
A major challenge in applying Bayesian tracking methods for tracking 3D human body pose is the high ...
Reconstructing an arbitrary configuration of 3D points from their projection in an image is an ill-p...
In this study we present a biologically motivated learning-based computer vision approach to human p...
International audienceThis paper describes a sparse Bayesian regression method for recovering 3D hum...
Many real-world applications require the estimation of human body joints for higher-level tasks as, ...
In this study we present a biologically motivated learning-based computer vision approach to human p...
<p>Reconstructing an arbitrary configuration of 3D points from their projection in an image is an il...
This paper presents a novel method for estimating the human body in 3D using depth sensor data. The ...
This thesis aims at investigating methodologies for estimating a human pose from a 3D point cloud th...