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Joint Spatial-Spectral Feature Space Clustering for Speech Activity Detection from ECoG Signals

机译:从ECoG信号进行语音活动检测的联合空间光谱特征空间聚类

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摘要

Brain machine interfaces for speech restoration have been extensively studied for more than two decades. The success of such a system will depend in part on selecting the best brain recording sites and signal features corresponding to speech production. The purpose of this study was to detect speech activity automatically from electrocorticographic signals based on joint spatial-frequency clustering of the ECoG feature space. For this study, the ECoG signals were recorded while a subject performed two different syllable repetition tasks. We found that the optimal frequency resolution to detect speech activity from ECoG signals was 8 Hz, achieving 98.8% accuracy by employing support vector machines (SVM) as a classifier. We also defined the cortical areas that held the most information about the discrimination of speech and non-speech time intervals. Additionally, the results shed light on the distinct cortical areas associated with the two syllable repetition tasks and may contribute to the development of portable ECoG-based communication.
机译:用于语音恢复的脑机接口已被广泛研究了二十多年。这种系统的成功将部分取决于选择最佳的大脑记录部位和对应于语音产生的信号特征。这项研究的目的是基于ECoG特征空间的联合空间频率聚类,从脑电图自动检测语音活动。对于本研究,在受试者执行两个不同的音节重复任务时记录了ECoG信号。我们发现,通过使用支持向量机(SVM)作为分类器,从ECoG信号中检测语音活动的最佳频率分辨率为8 Hz,达到98.8%的准确度。我们还定义了皮质区域,该区域包含有关语音和非语音时间间隔辨别的最多信息。此外,结果揭示了与两个音节重复任务相关的不同皮质区域,可能有助于基于便携式ECoG的通信的发展。

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