Inference of the Selective Auditory Attention using Sequential LMMSE Estimation
Ivine Kuruvila, Kubilay Can Demir, Eghart Fischer, Ulrich Hoppe

TL;DR
This paper introduces a rapid, computationally efficient method to decode auditory attention from EEG signals within two seconds, advancing neuro-steered hearing aid technology.
Contribution
It presents a novel framework combining sequential LMMSE estimation, peak extraction, and machine learning for quick attention inference from minimal EEG data.
Findings
Decodes attention within approximately two seconds.
Uses only four electrodes for attention inference.
Achieves reliable attention decoding with reduced calibration.
Abstract
Attentive listening in a multispeaker environment such as a cocktail party requires suppression of the interfering speakers and the noise around. People with normal hearing perform remarkably well in such situations. Analysis of the cortical signals using electroencephalography (EEG) has revealed that the EEG signals track the envelope of the attended speech stronger than that of the interfering speech. This has enabled the development of algorithms that can decode the selective attention of a listener in controlled experimental settings. However, often these algorithms require longer trial duration and computationally expensive calibration to obtain a reliable inference of attention. In this paper, we present a novel framework to decode the attention of a listener within trial durations of the order of two seconds. It comprises of three modules: 1) Dynamic estimation of the temporal…
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