Features for voice activity detection: a comparative analysis

Author:

Graf Simon,Herbig Tobias,Buck Markus,Schmidt Gerhard

Funder

Christian-Albrechts-Universität zu Kiel

Publisher

Springer Science and Business Media LLC

Reference61 articles.

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2. M Van Segbroeck, A Tsiartas, SS Narayanan, in Proc. of INTERSPEECH. A robust frontend for VAD: exploiting contextual, discriminative and spectral cues of human voice (ISCA,Lyon, France, 2013).

3. DK Freeman, CB Southcott, I Boyd, in Proc. of IEE Colloquium on Digitized Speech Communication via Mobile Radio. A voice activity detector for the Pan-European digital cellular mobile telephone service (IEEE,London, United Kingdom, 1988).

4. S Graf, T Herbig, M Buck, G Schmidt, in Proc. of ITG conference on speech communication. Improved performance measures for voice activity detection (IEEE,Erlangen, Germany, 2014).

5. DB Dean, S Sridharan, RJ Vogt, MW Mason, in Proc. of INTERSPEECH. The QUT-NOISE-TIMIT corpus for the evaluation of voice activity detection algorithms (ISCA,Makuhari, Japan, 2010).

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