A major challenge in applying Bayesian tracking methods for tracking 3D human body pose is the high dimensionality of the pose state space. It has been observed that the 3D human body pose parameters typically can be assumed to lie on a low-dimensional manifold embedded in the high-dimensional space. The goal of this work is to approximate the low-dimensional manifold so that a low-dimensional state vector can be obtained for efficient and effective Bayesian tracking. To achieve this goal, a globally coordinated mixture of factor analyzers is learned from motion capture data. Each factor analyzer in the mixture is a “locally linear dimensionality reducer” that approximates a part of the manifold. The global parametrization of the manifold i...
We present an algorithm for computing joint state, smoothed, density estimates for non-linear dynami...
International audienceWe present a markerless human motion capture system that estimates the 3D posi...
We present a novel approach for learning a finite mixture model on a Riemannian manifold in which Eu...
A major challenge in applying Bayesian tracking methods for tracking 3D human body pose is the high ...
A major challenge in applying Bayesian tracking methods for tracking 3D human body pose is the high ...
This thesis presents work on generative approaches to human motion tracking and pose estimation wher...
This paper addresses the problem of accurate and robust tracking of 3D human body pose from depth im...
This thesis presents work on generative approaches to human motion tracking and pose estimation whe...
We propose a novel kinematic prior for 3D human pose tracking that allows predicting the position in...
Particle filtering is a popular method used in systems for tracking human body pose in video. One ke...
We propose a novel kinematic prior for 3D human pose tracking that allows predicting the position in...
Characteristics of the 2D contour shape deformation in human motion contain rich information and can...
We study the problem of articulated 3D human motion tracking in monocular video sequences. Addressin...
International audienceWe address 3D human motion capture from monocular images, taking a learning ba...
Tracking generic human motion is highly challenging due to its high-dimensional state space and the ...
We present an algorithm for computing joint state, smoothed, density estimates for non-linear dynami...
International audienceWe present a markerless human motion capture system that estimates the 3D posi...
We present a novel approach for learning a finite mixture model on a Riemannian manifold in which Eu...
A major challenge in applying Bayesian tracking methods for tracking 3D human body pose is the high ...
A major challenge in applying Bayesian tracking methods for tracking 3D human body pose is the high ...
This thesis presents work on generative approaches to human motion tracking and pose estimation wher...
This paper addresses the problem of accurate and robust tracking of 3D human body pose from depth im...
This thesis presents work on generative approaches to human motion tracking and pose estimation whe...
We propose a novel kinematic prior for 3D human pose tracking that allows predicting the position in...
Particle filtering is a popular method used in systems for tracking human body pose in video. One ke...
We propose a novel kinematic prior for 3D human pose tracking that allows predicting the position in...
Characteristics of the 2D contour shape deformation in human motion contain rich information and can...
We study the problem of articulated 3D human motion tracking in monocular video sequences. Addressin...
International audienceWe address 3D human motion capture from monocular images, taking a learning ba...
Tracking generic human motion is highly challenging due to its high-dimensional state space and the ...
We present an algorithm for computing joint state, smoothed, density estimates for non-linear dynami...
International audienceWe present a markerless human motion capture system that estimates the 3D posi...
We present a novel approach for learning a finite mixture model on a Riemannian manifold in which Eu...