Dynamic Bayesian networks such as Hidden Markov Models (HMMs) are successfully used as probabilistic models for human motion. The use of hidden variables makes them expressive models, but inference is only approximate and requires procedures such as particle filters or Markov chain Monte Carlo methods. In this work we propose to instead use simple Markov models that only model observed quantities. We retain a highly expressive dynamic model by using interactions that are nonlinear and non-parametric. A presentation of our approach in terms of latent variables shows logarithmic growth for the computation of exact loglikelihoods in the number of latent states. We validate our model on human motion capture data and demonstrate state-of-the-art...
The Hidden Markov Model is a probabilistic time- series model that has recently found application in...
We present a learning algorithm for non-parametric hidden Markov models with continuous state and ob...
In this thesis we develop a class of nonlinear generative models for high-dimensional time series. T...
Dynamic Bayesian networks such as Hidden Markov Models (HMMs) are successfully used as probabilistic...
We present algorithms for coupling and training hidden Markov models (HMMs) to model interacting pro...
Hidden Markov models are a powerful technique to model and classify temporal sequences, such as in s...
International audienceModeling and predicting human and vehicle motion is an active research domain....
A common problem in human movement recognition is the recognition of movements of a particular type ...
Human activities are characterised by the spatio-temporal structure of their motion patterns. Such s...
We propose a hierarchical extension to hidden Markov model (HMM) under the Bayesian framework to ove...
International audienceModeling and predicting human and vehicle motion is an active research domain....
fffi%& 'ff !ff In this paper we present a method for adding Hidden Markov Models. The main...
The representation of human movements for recognition and synthesis is important in many application...
We propose a non-linear generative model for human motion data that uses an undirected model with bi...
In this paper we present a method for adding Hidden Markov Models. The main advantages of our metho...
The Hidden Markov Model is a probabilistic time- series model that has recently found application in...
We present a learning algorithm for non-parametric hidden Markov models with continuous state and ob...
In this thesis we develop a class of nonlinear generative models for high-dimensional time series. T...
Dynamic Bayesian networks such as Hidden Markov Models (HMMs) are successfully used as probabilistic...
We present algorithms for coupling and training hidden Markov models (HMMs) to model interacting pro...
Hidden Markov models are a powerful technique to model and classify temporal sequences, such as in s...
International audienceModeling and predicting human and vehicle motion is an active research domain....
A common problem in human movement recognition is the recognition of movements of a particular type ...
Human activities are characterised by the spatio-temporal structure of their motion patterns. Such s...
We propose a hierarchical extension to hidden Markov model (HMM) under the Bayesian framework to ove...
International audienceModeling and predicting human and vehicle motion is an active research domain....
fffi%& 'ff !ff In this paper we present a method for adding Hidden Markov Models. The main...
The representation of human movements for recognition and synthesis is important in many application...
We propose a non-linear generative model for human motion data that uses an undirected model with bi...
In this paper we present a method for adding Hidden Markov Models. The main advantages of our metho...
The Hidden Markov Model is a probabilistic time- series model that has recently found application in...
We present a learning algorithm for non-parametric hidden Markov models with continuous state and ob...
In this thesis we develop a class of nonlinear generative models for high-dimensional time series. T...