基于ecog的语音脑机接口实时语音活动检测

V. G. Kanas, I. Mporas, H. Benz, K. Sgarbas, Anastasios Bezerianos, N. Crone
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引用次数: 16

摘要

在这篇文章中,我们研究了一个实时语音活动检测模块的性能,该模块利用不同的时频方法来提取植入皮质电图(ECoG)电极的受试者的信号特征。我们使用受试者在执行音节重复任务时记录的脑电图信号。语音活动检测模块使用ECoG数据流作为输入,对其进行特征提取和分类。通过这种方法,我们能够高精度地从ECoG信号中检测语音活动(语音开始和偏移)。结果表明,不同的时频表示携带了关于语音活动的互补信息,使用86个最佳特征和支持向量机作为分类器,s变换的准确率达到92%。所提出的实时语音活动检测器可作为自动自然语音BMI系统的一部分,用于康复有沟通缺陷的个体。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-time voice activity detection for ECoG-based speech brain machine interfaces
In this article, we investigated the performance of a real-time voice activity detection module exploiting different time-frequency methods for extracting signal features in a subject with implanted electrocorticographic (ECoG) electrodes. We used ECoG signals recorded while the subject performed a syllable repetition task. The voice activity detection module used, as input, ECoG data streams, on which it performed feature extraction and classification. With this approach we were able to detect voice activity (speech onset and offset) from ECoG signals with high accuracy. The results demonstrate that different time-frequency representations carried complementary information about voice activity, with the S-transform achieving 92% accuracy using the 86 best features and support vector machines as the classifier. The proposed real-time voice activity detector may be used as a part of an automated natural speech BMI system for rehabilitating individuals with communication deficits.
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