Characteristics of the 2D contour shape deformation in human motion contain rich information and can be useful for human identification, gender classification, 3D pose reconstruction and so on. In this paper we introduce a new approach for contour tracking for human motion using an explicit modeling of the motion manifold and learning a decomposable generative model. We use nonlinear dimensionality reduction to embed the motion manifold in a low dimensional configuration space utilizing the constraints imposed by the human motion. Given such embedding, we learn an explicit representation of the manifold, which reduces the problem to a one-dimensional tracking problem and also facilitates linear dynamics on the manifold. We also utilize a ge...
We propose a novel visual tracking scheme that exploits boththe geometrical structure of Grassmann m...
This paper proposes a novel Bayesian online learning and tracking scheme for video objects on Grassm...
International audienceThis paper describes a sparse Bayesian regression method for recovering 3D hum...
Characteristics of the 2D contour shape deformation in human motion con-tain rich information and ca...
Modeling the dynamic shape and appearance of articulated moving objects is essential for human motio...
Abstract. If we consider the appearance of human motion such as gait, facial expression and gesturin...
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...
A major challenge in applying Bayesian tracking methods for tracking 3D human body pose is the high ...
We propose a non-linear generative model for human motion data that uses an undirected model with bi...
Abstract. We propose motion manifold learning and motion primitive segmentation framework for human ...
Abstract. Many difficult visual problems like monocular human tracking require complex heuristic gen...
We propose a novel nonlinear, probabilistic and variational method for adding shape information to l...
Tracking 3D people from monocular video is often poorly constrained. To mitigate this problem, prior...
Particle filtering is a popular method used in systems for tracking human body pose in video. One ke...
We propose a novel visual tracking scheme that exploits boththe geometrical structure of Grassmann m...
This paper proposes a novel Bayesian online learning and tracking scheme for video objects on Grassm...
International audienceThis paper describes a sparse Bayesian regression method for recovering 3D hum...
Characteristics of the 2D contour shape deformation in human motion con-tain rich information and ca...
Modeling the dynamic shape and appearance of articulated moving objects is essential for human motio...
Abstract. If we consider the appearance of human motion such as gait, facial expression and gesturin...
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...
A major challenge in applying Bayesian tracking methods for tracking 3D human body pose is the high ...
We propose a non-linear generative model for human motion data that uses an undirected model with bi...
Abstract. We propose motion manifold learning and motion primitive segmentation framework for human ...
Abstract. Many difficult visual problems like monocular human tracking require complex heuristic gen...
We propose a novel nonlinear, probabilistic and variational method for adding shape information to l...
Tracking 3D people from monocular video is often poorly constrained. To mitigate this problem, prior...
Particle filtering is a popular method used in systems for tracking human body pose in video. One ke...
We propose a novel visual tracking scheme that exploits boththe geometrical structure of Grassmann m...
This paper proposes a novel Bayesian online learning and tracking scheme for video objects on Grassm...
International audienceThis paper describes a sparse Bayesian regression method for recovering 3D hum...