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Learning speaker recognition models through human-robot interaction

Eric Martinson, Wallace Lawson

Year
2011
Citations
4

Abstract

Person identification is the problem of identifying an individual that a computer system is seeing, hearing, etc. Typically this is accomplished using models of the individual. Over time, however, people change. Unless the models stored by the robot change with them, those models will became less and less reliable over time. This work explores automatic updating of person identification models in the domain of speaker recognition. By fusing together tracking and recognition systems from both visual and auditory perceptual modalities, the robot can robustly identify people during continuous interactions and update its models in real-time, improving rates of speaker classification.

Keywords

Computer scienceSpeech recognitionSpeaker recognitionIdentification (biology)RobotModalitiesArtificial intelligenceSpeaker identificationPerceptionDomain (mathematical analysis)

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