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Highly efficient localisation utilising weightless neural systems

Ben McElroy, Michael Gillham, Gareth Howells, Sarah K. Spurgeon, Stephen W. Kelly, John C. Batchelor, Matthew Pepper

Year
2012
Citations
5
Access
Open access

Abstract

Efficient localisation is a highly desirable property for an autonomous navigation system. Weightless neural networks offer a real-time approach to robotics applications by reducing hardware and software requirements for pattern recognition techniques. Such networks offer the potential for objects, structures, routes and locations to be easily identified and maps constructed from fused limited sensor data as information becomes available. We show that in the absence of concise and complex information, localisation can be obtained using simple algorithms from data with inherent uncertainties using a combination of Genetic Algorithm techniques applied to a Weightless Neural Architecture. 1

Keywords

Computer scienceArtificial neural networkArtificial intelligenceRoboticsProperty (philosophy)SoftwareSimple (philosophy)RobotMachine learning

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