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Range sensor-based robot localization using neural network

Se‐Young Oh

Year
2007
Citations
12

Abstract

Localization is one of the most important requirements for mobile robot technology. Although many solutions have been proposed, there is no universally accepted solution. Most of the systems have some common drawbacks such as large computation power, expensive sensors, the scalability of environments, hard implementation, and the complexity of the system. The work presented in this paper deals with localization using ultrasonic range sensors and neural network. The proposed localization method can be implemented easily with several low cost range sensors and a low cost PC, thanks to the simplicity of neural network structure. Although neural network is trained in general environment for once, it is unnecessary to learn again in new environment. The experimental result shows that odometric errors are corrected with the proposed method.

Keywords

Computer scienceScalabilityMobile robotArtificial neural networkRobotRange (aeronautics)ComputationArtificial intelligenceSimplicityReal-time computing

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