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Decoding Speech Perception by Native and Non-Native Speakers Using Single-Trial Electrophysiological Data

机译:使用单次电生理数据解码本地和非本地说话者的语音知觉

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摘要

Brain-computer interfaces (BCIs) are systems that use real-time analysis of neuroimaging data to determine the mental state of their user for purposes such as providing neurofeedback. Here, we investigate the feasibility of a BCI based on speech perception. Multivariate pattern classification methods were applied to single-trial EEG data collected during speech perception by native and non-native speakers. Two principal questions were asked: 1) Can differences in the perceived categories of pairs of phonemes be decoded at the single-trial level? 2) Can these same categorical differences be decoded across participants, within or between native-language groups? Results indicated that classification performance progressively increased with respect to the categorical status (within, boundary or across) of the stimulus contrast, and was also influenced by the native language of individual participants. Classifier performance showed strong relationships with traditional event-related potential measures and behavioral responses. The results of the cross-participant analysis indicated an overall increase in average classifier performance when trained on data from all participants (native and non-native). A second cross-participant classifier trained only on data from native speakers led to an overall improvement in performance for native speakers, but a reduction in performance for non-native speakers. We also found that the native language of a given participant could be decoded on the basis of EEG data with accuracy above 80%. These results indicate that electrophysiological responses underlying speech perception can be decoded at the single-trial level, and that decoding performance systematically reflects graded changes in the responses related to the phonological status of the stimuli. This approach could be used in extensions of the BCI paradigm to support perceptual learning during second language acquisition.
机译:脑机接口(BCI)是使用神经影像数据的实时分析来确定其用户的心理状态的系统,目的是提供神经反馈。在这里,我们研究基于语音感知的BCI的可行性。将多元模式分类方法应用于母语和非母语者在语音感知过程中收集的单次EEG数据。提出了两个主要问题:1)是否可以在单次尝试级别上解码音素对的感知类别中的差异? 2)是否可以在参与者之间,母语组之内或之间对这些相同的类别差异进行解码?结果表明,分类表现相对于刺激对比的分类状态(在边界之内,在边界之内或在边界之内)逐渐提高,并且还受到个体参与者母语的影响。分类器的性能显示与传统的事件相关的潜在测度和行为反应密切相关。跨参与者分析的结果表明,对来自所有参与者(本地人和非本地人)的数据进行训练后,平均分类器性能总体提高。第二个跨参与者分类器仅对来自母语使用者的数据进行训练,从而导致总体上提高了母语人士的性能,但降低了非母语人士的性能。我们还发现,可以基于EEG数据对给定参与者的母语进行解码,其准确性高于80%。这些结果表明,语音知觉的电生理反应可以在单次尝试水平上进行解码,并且解码性能系统地反映了与刺激的语音状态有关的响应中的分级变化。此方法可用于BCI范式的扩展中,以支持第二语言习得期间的感知学习。

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