The paradigm case for robotic mapping assumes large quantities of sensory information which allow the use of relatively weak priors. In contrast, the present study considers the mapping problem in environments where only sparse, local sensory information is available. To compensate for these weak likelihoods, we make use of strong hierarchical object priors. Hierarchical models were popular in classical blackboard systems but are here applied in a Bayesian setting and novelly deployed as a mapping algorithm. We give proof of concept results, intended to demonstrate the algorithm’s applicability as a part of a tactile SLAM module for the whiskered SCRATCHbot mobile robot platform
What is a map? What is its utility? What is a location, a behaviour? What are navigation, localizati...
This paper presents a novel solution for building three-dimensional dense maps in unknown and unstru...
Presented at ISER 2010, 12th International Symposium on Experimental Robotics, December 18-21, 2010,...
The paradigm case for robotic mapping assumes large quantities of sensory information which allow th...
Future robots may need to navigate where visual sensors fail. Touch sensors provide an alternative m...
Mobile robots need to be fully autonomous in order to perform their tasks inside their environment. ...
A biomimetic mobile robot called “Shrewbot” has been built as part of a neuroethological study of th...
The problem of robotic mapping, also known as simultaneous localization and mapping (SLAM), by a mob...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Aeronautics and Astronautics, 2...
The problem of robotic mapping and localization is that of constructing a spatial model (the map) of...
The emerging of mobile robots in everyday life scenarios, such as in the case of domestic care robot...
Robotic navigation algorithms for real-world robots require dense and accurate probabilistic volumet...
We present an application of Bayesian modeling and inference to topological mapping in robotics. Thi...
In this thesis, I took two key ideas of cognitive mapping developed in Yeap’s (1988) theory of cogni...
The problem of Simultaneous Localisation And Mapping (SLAM) has been widely researched and has been ...
What is a map? What is its utility? What is a location, a behaviour? What are navigation, localizati...
This paper presents a novel solution for building three-dimensional dense maps in unknown and unstru...
Presented at ISER 2010, 12th International Symposium on Experimental Robotics, December 18-21, 2010,...
The paradigm case for robotic mapping assumes large quantities of sensory information which allow th...
Future robots may need to navigate where visual sensors fail. Touch sensors provide an alternative m...
Mobile robots need to be fully autonomous in order to perform their tasks inside their environment. ...
A biomimetic mobile robot called “Shrewbot” has been built as part of a neuroethological study of th...
The problem of robotic mapping, also known as simultaneous localization and mapping (SLAM), by a mob...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Aeronautics and Astronautics, 2...
The problem of robotic mapping and localization is that of constructing a spatial model (the map) of...
The emerging of mobile robots in everyday life scenarios, such as in the case of domestic care robot...
Robotic navigation algorithms for real-world robots require dense and accurate probabilistic volumet...
We present an application of Bayesian modeling and inference to topological mapping in robotics. Thi...
In this thesis, I took two key ideas of cognitive mapping developed in Yeap’s (1988) theory of cogni...
The problem of Simultaneous Localisation And Mapping (SLAM) has been widely researched and has been ...
What is a map? What is its utility? What is a location, a behaviour? What are navigation, localizati...
This paper presents a novel solution for building three-dimensional dense maps in unknown and unstru...
Presented at ISER 2010, 12th International Symposium on Experimental Robotics, December 18-21, 2010,...