EEG-based auditory attention decoding using speech-level-based segmented computational models

Volume: 18, Issue: 4, Pages: 046066 - 046066
Published: May 25, 2021
Abstract
Objective. Auditory attention in complex scenarios can be decoded by electroencephalography (EEG)-based cortical speech-envelope tracking. The relative root-mean-square (RMS) intensity is a valuable cue for the decomposition of speech into distinct characteristic segments. To improve auditory attention decoding (AAD) performance, this work proposed a novel segmented AAD approach to decode target speech envelopes from different RMS-level-based...
Paper Details
Title
EEG-based auditory attention decoding using speech-level-based segmented computational models
Published Date
May 25, 2021
Volume
18
Issue
4
Pages
046066 - 046066
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