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A recurrent neural network for sound-source motion tracking and prediction

John C. Murray, Harry Erwin, Stefan Wermter

Year
2006
Citations
3

Abstract

Recurrent neural networks (RNN) have been used in many applications for both pattern detection and prediction. This paper shows the use of RNN's as a speed classifier and predictor for a robotic sound source tracking system. The system requires extensive training to classify all possible speeds to enable dynamic tracking of the most prominent sound within the environment.

Keywords

Recurrent neural networkComputer scienceArtificial intelligenceArtificial neural networkTracking (education)Classifier (UML)Source trackingTracking systemComputer visionKalman filter

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