We propose a non-linear generative model for human motion data that uses an undirected model with binary latent variables and real-valued “visible ” variables that represent joint angles. The latent and visible variables at each time step receive directed connections from the visible variables at the last few time-steps. Such an architecture makes on-line inference efficient and allows us to use a simple approximate learning procedure. After training, the model finds a single set of parameters that simultaneously capture several different kinds of motion. We demonstrate the power of our approach by synthesizing various motion sequences and by performing on-line filling in of data lost during motion capture. Website
Abstract. We propose motion manifold learning and motion primitive segmentation framework for human ...
Humans possess a comprehensive set of interaction capabilities at various levels of abstraction incl...
We propose a new representation of human body motion which encodes a full motion in a sequence of la...
Characteristics of the 2D contour shape deformation in human motion contain rich information and can...
Non-linear statistical models of deformation provide methods to learn a priori shape and deformation...
Modeling the dynamic shape and appearance of articulated moving objects is essential for human motio...
We present a novel method to model and synthesize variation in motion data. Given a few examples of ...
In the present work, we describe a mathematical model to generate human-like motion trajectories in ...
Dynamic Bayesian networks such as Hidden Markov Models (HMMs) are successfully used as probabilistic...
We investigate a novel approach for representation of kinematic trajectories in complex movement sys...
Abstract. We interpret biological motion trajectories as being com-posed of sequences of sub-blocks ...
This thesis presents work on generative approaches to human motion tracking and pose estimation wher...
Human motion variation synthesis is important for crowd simulation and interactive applications to e...
Abstract: To reuse existing motion data and generate new motion, a method of human motion nonlinear ...
We present a novel framework for the automatic discovery and recognition of human motion primitives...
Abstract. We propose motion manifold learning and motion primitive segmentation framework for human ...
Humans possess a comprehensive set of interaction capabilities at various levels of abstraction incl...
We propose a new representation of human body motion which encodes a full motion in a sequence of la...
Characteristics of the 2D contour shape deformation in human motion contain rich information and can...
Non-linear statistical models of deformation provide methods to learn a priori shape and deformation...
Modeling the dynamic shape and appearance of articulated moving objects is essential for human motio...
We present a novel method to model and synthesize variation in motion data. Given a few examples of ...
In the present work, we describe a mathematical model to generate human-like motion trajectories in ...
Dynamic Bayesian networks such as Hidden Markov Models (HMMs) are successfully used as probabilistic...
We investigate a novel approach for representation of kinematic trajectories in complex movement sys...
Abstract. We interpret biological motion trajectories as being com-posed of sequences of sub-blocks ...
This thesis presents work on generative approaches to human motion tracking and pose estimation wher...
Human motion variation synthesis is important for crowd simulation and interactive applications to e...
Abstract: To reuse existing motion data and generate new motion, a method of human motion nonlinear ...
We present a novel framework for the automatic discovery and recognition of human motion primitives...
Abstract. We propose motion manifold learning and motion primitive segmentation framework for human ...
Humans possess a comprehensive set of interaction capabilities at various levels of abstraction incl...
We propose a new representation of human body motion which encodes a full motion in a sequence of la...