Visual self-localisation using automatic topology construction

ICIAP(2003)

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摘要
The paper proposes a machine learning method for self-localising a mobile agent, using the images supplied by a single omni-directional camera. The images acquired by the camera may be viewed as an implicit topological representation of the environment. The environment is a priori unknown and the topological representation is derived by unsupervised neural network architecture. The architecture includes a self-organising neural network, and is constituted by a growing neural gas, which is well known for its topology preserving quality. The growth depends on the topology that is not a priori defined, and on the need of discovering it, by the neural network, during the learning. The implemented system is able to recognise correctly the input frames and to reconstruct a topological map of the environment. Each node of the neural network identifies a single zone of the environment and the connections between the nodes correspond to the real space connections in the environment.
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image recognition,mobile robots,navigation,robot vision,self-organising feature maps,topology,unsupervised learning,artificial vision,automatic topology construction,growing neural gas,image recognition,machine learning,mobile agent,mobile robots,omni-directional camera,self-organising neural network,topological map reconstruction,unsupervised neural network,visual self-localisation
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