This paper introduces Gaussian Process Dynamical Models (GPDM) for nonlinear time series analysis. A GPDM comprises a low-dimensional latent space with associated dynamics, and a map from the latent space to an observation space. We marginalize out the model parameters in closed-form, using Gaussian Process (GP) priors for both the dynamics and the observation mappings. This results in a nonparametric model for dynamical systems that accounts for uncertainty in the model. We demonstrate the approach on human motion capture data in which each pose is 62-dimensional. Despite the use of small data sets, the GPDM learns an effective representation of the nonlinear dynamics in these spaces. Webpage
Gaussian processes provide an approach to nonparametric modelling which allows a straightforward com...
Gaussian process prior models are known to be a powerful non-parametric tool for stochastic data mod...
In this paper, we offer a gentle introduction to Gaussian processes for time-series data analysis. T...
This paper introduces Gaussian Process Dynamical Models (GPDM) for nonlinear time series analysis. A...
This paper introduces Gaussian Process Dynamical Models (GPDM) for nonlinear time series analysis. A...
This paper introduces Gaussian Process Dynamical Models (GPDM) for nonlinear time series analysis. A...
In this paper, we propose a Gaussian process model for analysis of nonlinear time series. Formulatio...
High dimensional time series are endemic in applications of machine learning such as robotics (senso...
This paper describes the identification of nonlinear dynamic systems with a Gaussian process (GP) pr...
Gaussian processes provide an approach to nonparametric modelling which allows a straightforward com...
Gaussian processes provide an approach to nonparametric modelling which allows a straightforward com...
The analysis of time series data is important in fields as disparate as the social sciences, biology...
The Gaussian process state space model (GPSSM) is a non-linear dynamical system, where unknown trans...
The analysis of time series data is important for many fields, ranging from meteorology and engineer...
Currently the Gaussian Process Dynamical Model is an upcoming model identification technique for non...
Gaussian processes provide an approach to nonparametric modelling which allows a straightforward com...
Gaussian process prior models are known to be a powerful non-parametric tool for stochastic data mod...
In this paper, we offer a gentle introduction to Gaussian processes for time-series data analysis. T...
This paper introduces Gaussian Process Dynamical Models (GPDM) for nonlinear time series analysis. A...
This paper introduces Gaussian Process Dynamical Models (GPDM) for nonlinear time series analysis. A...
This paper introduces Gaussian Process Dynamical Models (GPDM) for nonlinear time series analysis. A...
In this paper, we propose a Gaussian process model for analysis of nonlinear time series. Formulatio...
High dimensional time series are endemic in applications of machine learning such as robotics (senso...
This paper describes the identification of nonlinear dynamic systems with a Gaussian process (GP) pr...
Gaussian processes provide an approach to nonparametric modelling which allows a straightforward com...
Gaussian processes provide an approach to nonparametric modelling which allows a straightforward com...
The analysis of time series data is important in fields as disparate as the social sciences, biology...
The Gaussian process state space model (GPSSM) is a non-linear dynamical system, where unknown trans...
The analysis of time series data is important for many fields, ranging from meteorology and engineer...
Currently the Gaussian Process Dynamical Model is an upcoming model identification technique for non...
Gaussian processes provide an approach to nonparametric modelling which allows a straightforward com...
Gaussian process prior models are known to be a powerful non-parametric tool for stochastic data mod...
In this paper, we offer a gentle introduction to Gaussian processes for time-series data analysis. T...