© 2017 IEEE. In this paper, we study extensions to the Gaussian processes (GPs) continuous occupancy mapping problem. There are two classes of occupancy mapping problems that we particularly investigate. The first problem is related to mapping under pose uncertainty and how to propagate pose estimation uncertainty into the map inference. We develop expected kernel and expected submap notions to deal with uncertain inputs. In the second problem, we account for the complication of the robot's perception noise using warped Gaussian processes (WGPs). This approach allows for non-Gaussian noise in the observation space and captures the possible nonlinearity in that space better than standard GPs. The developed techniques can be applied separatel...
Abstract—The vast amount of data robots can capture today motivates the development of fast and scal...
An information-driven autonomous robotic explo- ration method on a continuous representation of unkn...
When learning continuous dynamical systems with Gaussian Processes, computing trajectories requires ...
University of Technology Sydney. Faculty of Engineering and Information Technology.This thesis propo...
Mapping with uncertainty representation is required in many research domains, especially for localiz...
© 2017, Springer Science+Business Media, LLC. Most of the existing robotic exploration schemes use o...
This thesis proposes new methods for robotic mapping using Bayesian nonparametric models such as Gau...
Mapping the occupancy level of an environment is important for a robot to navigate in unknown and un...
Robotic navigation algorithms for real-world robots require dense and accurate probabilistic volumet...
This paper proposes a new method for building occupancy maps and surface meshes using hierarchical G...
© 2019 IEEE. This paper presents a novel method for representing an uncertain occupancy map using a ...
© 2014 IEEE. An information-driven autonomous robotic exploration method on a continuous representat...
This work addresses the problem of occupancy mapping with uncertain measurements taken from one or m...
Generating meaningful spatial models of physical environments is a crucial ability for autonomous na...
Generating meaningful spatial models of physical environments is a crucial ability for autonomous na...
Abstract—The vast amount of data robots can capture today motivates the development of fast and scal...
An information-driven autonomous robotic explo- ration method on a continuous representation of unkn...
When learning continuous dynamical systems with Gaussian Processes, computing trajectories requires ...
University of Technology Sydney. Faculty of Engineering and Information Technology.This thesis propo...
Mapping with uncertainty representation is required in many research domains, especially for localiz...
© 2017, Springer Science+Business Media, LLC. Most of the existing robotic exploration schemes use o...
This thesis proposes new methods for robotic mapping using Bayesian nonparametric models such as Gau...
Mapping the occupancy level of an environment is important for a robot to navigate in unknown and un...
Robotic navigation algorithms for real-world robots require dense and accurate probabilistic volumet...
This paper proposes a new method for building occupancy maps and surface meshes using hierarchical G...
© 2019 IEEE. This paper presents a novel method for representing an uncertain occupancy map using a ...
© 2014 IEEE. An information-driven autonomous robotic exploration method on a continuous representat...
This work addresses the problem of occupancy mapping with uncertain measurements taken from one or m...
Generating meaningful spatial models of physical environments is a crucial ability for autonomous na...
Generating meaningful spatial models of physical environments is a crucial ability for autonomous na...
Abstract—The vast amount of data robots can capture today motivates the development of fast and scal...
An information-driven autonomous robotic explo- ration method on a continuous representation of unkn...
When learning continuous dynamical systems with Gaussian Processes, computing trajectories requires ...