Assessing the effects of accent-mismatched reference population databases on the performance of an automatic speaker recognition system
Issue: Vol 27 No. 1 (2020)
Subject Areas: Linguistics
Author: Dominic Watt, Philip Harrison, Vincent Hughes, Peter French, Carmen Llamas, Almut Braun, Duncan Robertson
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