Paper data
Title:
A Speech/Music Discriminator using RMS and Zero-crossings Author(s): Panagiotakis Costas, University of Crete Tziritas Georgios, University of Crete Page numbers in the proceedings: Volume III pp 459-462 Session: Content based Audio and Video Indexing (2/2)
Paper abstract
An audio segmentation method and a speech/music classifier are proposed. The characteristics used are considerably reduced. Segmentation is based on mean signal amplitude distribution, whereas classification utilizes an additional characteristic related to the mean frequency. The segmentation and classification algorithms were benchmarked on a large dataset, with correct segmentation about 97% of the time and correct classification about 95%.
Paper
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