We propose a non-parametric model for pedestrian motion based on Gaussian Process regression, in which trajectory data are modelled by regressing relative motion against current position. We show how the underlying model can be learned in an unsupervised fashion, demonstrating this on two databases collected from static surveillance cameras. We furthermore exemplify the use of model for prediction, comparing the recently proposed GP-Bayesfilters with a Monte Carlo method. We illustrate the benefit of this approach for long term motion prediction where parametric models such as Kalman Filters would perform poorly.David Ellis, Eric Sommerlade and Ian Rei
Constructing models of mobile agents can be difficult with-out domain-specific knowledge. Parametric...
We present a method to model and classify trajectory data that come from surveillance videos. Observ...
To plan safe trajectories in urban environments, autonomous vehicles must be able to quickly assess ...
Online multi-person tracking in image sequences is commonly guided by recursive filters, whose predi...
For safe navigation in dynamic environments, an autonomous vehicle must be able to identify and pred...
Online multi-person tracking in image sequences is commonly guided by recursive filters, whose predi...
This paper addresses the use of social behavior models for the prediction of a pedestrian's future m...
Constructing models of mobile agents can be difficult without domain-specific knowledge. Parametric ...
a b s t r a c t We propose a novel methodology for predicting human gait pattern kinematics based on...
Conventional trajectory-based vehicular traffic analysis approaches work well in simple environments...
As cities grow, efficient public transport systems are becoming increasingly important. To offer a m...
Abstract—Pedestrian protection systems are being included by many automobile manufacturers in their ...
This paper introduces Gaussian Process Dynamical Models (GPDM) for nonlinear time series analysis. A...
Abstract—Trajectories are used in many target tracking and other fusion-related applications. In thi...
Tracking 3D people from monocular video is often poorly constrained. To mitigate this problem, prior...
Constructing models of mobile agents can be difficult with-out domain-specific knowledge. Parametric...
We present a method to model and classify trajectory data that come from surveillance videos. Observ...
To plan safe trajectories in urban environments, autonomous vehicles must be able to quickly assess ...
Online multi-person tracking in image sequences is commonly guided by recursive filters, whose predi...
For safe navigation in dynamic environments, an autonomous vehicle must be able to identify and pred...
Online multi-person tracking in image sequences is commonly guided by recursive filters, whose predi...
This paper addresses the use of social behavior models for the prediction of a pedestrian's future m...
Constructing models of mobile agents can be difficult without domain-specific knowledge. Parametric ...
a b s t r a c t We propose a novel methodology for predicting human gait pattern kinematics based on...
Conventional trajectory-based vehicular traffic analysis approaches work well in simple environments...
As cities grow, efficient public transport systems are becoming increasingly important. To offer a m...
Abstract—Pedestrian protection systems are being included by many automobile manufacturers in their ...
This paper introduces Gaussian Process Dynamical Models (GPDM) for nonlinear time series analysis. A...
Abstract—Trajectories are used in many target tracking and other fusion-related applications. In thi...
Tracking 3D people from monocular video is often poorly constrained. To mitigate this problem, prior...
Constructing models of mobile agents can be difficult with-out domain-specific knowledge. Parametric...
We present a method to model and classify trajectory data that come from surveillance videos. Observ...
To plan safe trajectories in urban environments, autonomous vehicles must be able to quickly assess ...