2017
DOI: 10.1101/222661
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Real-Time Tracking of Selective Auditory Attention from M/EEG: A Bayesian Filtering Approach

Abstract: Humans are able to identify and track a target speaker amid a cacophony of acoustic interference, which is often referred to as the cocktail party phenomenon. Results from several decades of studying this phenomenon have culminated in recent years in various promising attempts to decode the attentional state of a listener in a competing-speaker environment from non-invasive neuroimaging recordings such as magnetoencephalography (MEG) and electroencephalography (EEG). To this end, most existing approaches compu… Show more

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Cited by 22 publications
(44 citation statements)
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“…In recent years, methods for decoding attention to natural speech have been heavily investigated (O'Sullivan et al., ; Mirkovic et al., ; Akram, Presacco, Simon, Shamma, & Babadi, ; Fuglsang, Dau, & Hjortkjær, ; O'Sullivan, Crosse, Di Liberto, & Lalor, ; O'Sullivan, Chen, et al., ; Denk et al., ; Miran et al., ). This has, for the most part, been driven by the goal of realizing these algorithms in wearable devices (Fiedler, Obleser, Lunner, & Graversen, ; Haghighi, Moghadamfalahi, Akcakaya, Shinn‐Cunningham, & Erdogmus, ; Mirkovic, Bleichner, De Vos, & Debener, ).…”
Section: Discussionmentioning
confidence: 99%
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“…In recent years, methods for decoding attention to natural speech have been heavily investigated (O'Sullivan et al., ; Mirkovic et al., ; Akram, Presacco, Simon, Shamma, & Babadi, ; Fuglsang, Dau, & Hjortkjær, ; O'Sullivan, Crosse, Di Liberto, & Lalor, ; O'Sullivan, Chen, et al., ; Denk et al., ; Miran et al., ). This has, for the most part, been driven by the goal of realizing these algorithms in wearable devices (Fiedler, Obleser, Lunner, & Graversen, ; Haghighi, Moghadamfalahi, Akcakaya, Shinn‐Cunningham, & Erdogmus, ; Mirkovic, Bleichner, De Vos, & Debener, ).…”
Section: Discussionmentioning
confidence: 99%
“…As well as characterizing the neural representations of these streams, researchers have also built on these findings to use noninvasive electroencephalography (EEG) recordings to “decode” attentional selection in a multi‐speaker environment (Bleichner, Mirkovic, & Debener, ; Miran et al., ; Mirkovic, Debener, Jaeger, & Vos, ; O'Sullivan et al., ; Van Eyndhoven, Francart, & Bertrand, ). This is done by relating the acoustic envelope of a speech stimulus to the concurrently recorded EEG.…”
Section: Introductionmentioning
confidence: 99%
“…Here, the stimulus does not have to be known, but a major practical limitation comes with the condition that it can only be performed if there are enough repetitions of the same stimulus in the data to effectively enhance the stimulus following responses by averaging. DSS is often used to denoise MEG responses with a relatively small number of repetitions (Akram et al, 2016;Ding and Simon, 2012b;Miran et al, 2018), but the SNR in EEG responses is considerably lower (Kong et al, 2015). In addition, the GEVD approach renders pre-whitening and the PCA steps unnecessary, resulting in improved computational efficiency.…”
Section: Discussionmentioning
confidence: 99%
“…1) Short-term TRF estimation, where short trials are used to estimate TRFs that map the auditory stimulus envelope to the neural responses. The estimated TRFs can be visualized to track the effect of attention on the TRF shapes, and eventually to even decode attention in real-time without any prior training of decoders (Akram et al, 2017;Miran et al, 2018).…”
mentioning
confidence: 99%
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