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SPEAKER DIARIZATION USING DEEP LEARNING AND HMM SPEAKER MODELS (ISSN: 2456-0448)

PublisherIjirmet

ISSN-L2456-0448

E-ISSN2456-0448

IF(Impact Factor)2024 Evaluation Pending

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Description

Speaker diarization finds continuous speaker segments in an audio stream and clusters them by speaker identity. In this
paper we propose a method for Speaker diarization by using a new area of machine learning, i.e Deep learning. For Speaker
segmentation we trained one of the Deep Learning Network by short-term spectral features to predict given speech segments belongs to
same or different speaker and for Speaker clustering HMM speaker models has been used for speaker recognition from the given set of
speakers.

Last modified: 2017-03-22 19:34:07

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