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Dive into the research topics where David Prasser is active.

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Featured researches published by David Prasser.


international conference on robotics and automation | 2004

RatSLAM: a hippocampal model for simultaneous localization and mapping

Michael Milford; Gordon Wyeth; David Prasser

The work presents a new approach to the problem of simultaneous localization and mapping - SLAM - inspired by computational models of the hippocampus of rodents. The rodent hippocampus has been extensively studied with respect to navigation tasks, and displays many of the properties of a desirable SLAM solution. RatSLAM is an implementation of a hippocampal model that can perform SLAM in real time on a real robot. It uses a competitive attractor network to integrate odometric information with landmark sensing to form a consistent representation of the environment. Experimental results show that RatSLAM can operate with ambiguous landmark information and recover from both minor and major path integration errors.


Robotics and Autonomous Systems | 2007

Learning spatial concepts from RatSLAM representations

Michael Milford; Ruth Schulz; David Prasser; Gordon Wyeth; Janet Wiles

RatSLAM is a biologically-inspired visual SLAM and navigation system that has been shown to be effective indoors and outdoors on real robots. The spatial representation at the core of RatSLAM, the experience map, forms in a distributed fashion as the robot learns the environment. The activity in RatSLAM’s experience map possesses some geometric properties, but still does not represent the world in a human readable form. A new system, dubbed RatChat, has been introduced to enable meaningful communication with the robot. The intention is to use the “language games” paradigm to build spatial concepts that can be used as the basis for communication. This paper describes the first step in the language game experiments, showing the potential for meaningful categorization of the spatial representations in RatSLAM.


Faculty of Built Environment and Engineering; School of Engineering Systems | 2006

Outdoor Simultaneous Localisation and Mapping Using RatSLAM

David Prasser; Michael Milford; Gordon Wyeth

In this paper an existing method for indoor Simultaneous Localisation and Mapping (SLAM) is extended to operate in large outdoor environments using an omnidirectional camera as its principal external sensor. The method, RatSLAM, is based upon computational models of the area in the rat brain that maintains the rodent’s idea of its position in the world. The system uses the visual appearance of different locations to build hybrid spatial-topological maps of places it has experienced that facilitate relocalisation and path planning. A large dataset was acquired from a dynamic campus environment and used to verify the system’s ability to construct representations of the world and simultaneously use these representations to maintain localisation.


intelligent robots and systems | 2006

RatSLAM on the Edge: Revealing a Coherent Representation from an Overloaded Rat Brain

Michael Milford; Gordon Wyeth; David Prasser

The RatSLAM system can perform vision based SLAM using a computational model of the rodent hippocampus. When the number of pose cells used to represent space in RatSLAM is reduced, artifacts are introduced that hinder its use for goal directed navigation. This paper describes a new component for the RatSLAM system called an experience map, which provides a coherent representation for goal directed navigation. Results are presented for two sets of real world experiments, including comparison with the original goal memory systems performance in the same environment. Preliminary results are also presented demonstrating the ability of the experience map to adapt to simple short term changes in the environment


international conference on robotics and automation | 2003

Probabilistic visual recognition of artificial landmarks for simultaneous localization and mapping

David Prasser; Gordon Wyeth

Probabilistic robotics most often applied to the problem of simultaneous localisation and mapping (SLAM), requires measures of uncertainty to accompany observations of the environment. This paper describes how uncertainty can be characterised for a vision system that locates coloured landmarks in a typical laboratory environment. The paper describes a model of the uncertainty in segmentation, the internal cameral model and the mounting of the camera on the robot. It explains the implementation of the system on a laboratory robot, and provides experimental results that show the coherence of the uncertainty model.


international conference on robotics and automation | 2005

Efficient Goal Directed Navigation using RatSLAM

Michael Milford; Gordon Wyeth; David Prasser

RatSLAM is a system for vision based Simultaneous Localization and Mapping (SLAM) that has been shown to be capable of building stable representations of real world environments. In this paper we describe a method for using RatSLAM representations as the basis for navigation to designated goal locations. The method uses a new component, goal memory, to learn the temporal gradient between places. Paths are recalled or inferred from the goal memory by following the temporal gradient from the robot’s current position to the goal location. Experimental results have been gathered in a combined office and laboratory environment using a Pioneer robot. The experiments show that the robot can perform vision based SLAM on-line and in real time, and then use those representations immediately to navigate directly to designated goal locations.


intelligent robots and systems | 2004

Biologically inspired visual landmark processing for simultaneous localization and mapping

David Prasser; Gordon Wyeth; Michael Milford

This paper illustrates a method for finding useful visual landmarks for performing simultaneous localization and mapping (SLAM). The method is based loosely on biological principles, using layers of filtering and pooling to create learned templates that correspond to different views of the environment. Rather than using a set of landmarks and reporting range and bearing to the landmark, this system maps views to poses. The challenge is to produce a system that produces the same view for small changes in robot pose, but provides different views for larger changes in pose. The method has been developed to interface with the RatSLAM system, a biologically inspired method of SLAM. The paper describes the method of learning and recalling visual landmarks in detail, and shows the performance of the visual system in real robot tests.


The 7th International Conference of the Evolution of Language (EVOLANG7) | 2008

The formation, generative power, and evolution of toponyms: Grounding a spatial vocabulary in a cognitive map

Ruth Schulz; David Prasser; Paul Stockwell; Gordon Wyeth; Janet Wiles

We present a series of studies investigating the formation, generative power, and evolution of toponyms (i.e. topographic names). The domain chosen for this project is the spatial concepts related to places in an environment, one of the key sets of concepts to be grounded in autonomous agents. Concepts for places cannot be directly perceived as they require knowledge of relationships between locations in space, with representations inferred from ambiguous sensory data acquired through exploration. A generative toponymic language game has been developed to allow the agents to interact, forming concepts for locations and spatial relations. The studies demonstrate how a grounded generative toponymic language can form and evolve in a population of agents interacting through language games. Initially, terms are grounded in simple spatial concepts directly experienced by the agents. A generative process then enables the agents to learn about and refer to locations beyond their direct experience, enabling concepts and toponyms to co-evolve. The significance of this research is the demonstration of grounding for both experienced and novel concepts, using a generative process, applied to spatial locations.


field and service robotics | 2006

Outdoor simultaneous localisation and mapping using RATSLAM

David Prasser; Michael Milford; Gordon Wyeth

In this paper an existing method for indoor Simultaneous Localisation and Mapping (SLAM) is extended to operate in large outdoor environments using an omnidirectional camera as its principal external sensor. The method, RatSLAM, is based upon computational models of the area in the rat brain that maintains the rodent’s idea of its position in the world. The system uses the visual appearance of different locations to build hybrid spatial-topological maps of places it has experienced that facilitate relocalisation and path planning. A large dataset was acquired from a dynamic campus environment and used to verify the system’s ability to construct representations of the world and simultaneously use these representations to maintain localisation.


Institute for Future Environments; Science & Engineering Faculty | 2010

Experiments in Visual Localisation around Underwater Structures

Stephen Nuske; Jonathan M. Roberts; David Prasser; Gordon Wyeth

Localisation of an AUV is challenging and a range of inspection applications require relatively accurate positioning information with respect to submerged structures. We have developed a vision based localisation method that uses a 3D model of the structure to be inspected. The system comprises a monocular vision system, a spotlight and a low-cost IMU. Previous methods that attempt to solve the problem in a similar way try and factor out the effects of lighting. Effects, such as shading on curved surfaces or specular reflections, are heavily dependent on the light direction and are difficult to deal with when using existing techniques. The novelty of our method is that we explicitly model the light source. Results are shown of an implementation on a small AUV in clear water at night.

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Gordon Wyeth

Queensland University of Technology

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Michael Milford

Queensland University of Technology

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Matthew Dunbabin

Queensland University of Technology

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Janet Wiles

University of Queensland

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Jonathan M. Roberts

Queensland University of Technology

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Ruth Schulz

University of Queensland

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Stephen Nuske

Carnegie Mellon University

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Paul Stockwell

University of Queensland

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Shervin Emami

University of Queensland

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Wenyan Hu

University of Queensland

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