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首页> 外文期刊>Journal of neural engineering >Direct classification of all American English phonemes using signals from functional speech motor cortex
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Direct classification of all American English phonemes using signals from functional speech motor cortex

机译:使用功能性语音运动皮层的信号直接对所有美国英语音素进行分类

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摘要

Objective. Although brain-computer interfaces (BCIs) can be used in several different ways to restore communication, communicative BCI has not approached the rate or efficiency of natural human speech. Electrocorticography (ECoG) has precise spatiotemporal resolution that enables recording of brain activity distributed over a wide area of cortex, such as during speech production. In this study, we sought to decode elements of speech production using ECoG. Approach. We investigated words that contain the entire set of phonemes in the general American accent using ECoG with four subjects. Using a linear classifier, we evaluated the degree to which individual phonemes within each word could be correctly identified from cortical signal. Main results. We classified phonemes with up to 36% accuracy when classifying all phonemes and up to 63% accuracy for a single phoneme. Further, misclassified phonemes follow articulation organization described in phonology literature, aiding classification of whole words. Precise temporal alignment to phoneme onset was crucial for classification success. Significance. We identified specific spatiotemporal features that aid classification, which could guide future applications. Word identification was equivalent to information transfer rates as high as 3.0 bits s~(-1) (33.6 words min~(-1)), supporting pursuit of speech articulation for BCI control.
机译:目的。尽管可以以几种不同的方式使用脑机接口(BCI)来恢复交流,但交流BCI尚未达到自然人语音的速率或效率。皮层脑电图(ECoG)具有精确的时空分辨率,可以记录分布在整个皮质区域的大脑活动,例如在语音生成过程中。在这项研究中,我们试图使用ECoG解码语音产生的元素。方法。我们使用带有四个主题的ECoG,调查了包含整个美国口音中所有音素集合的单词。使用线性分类器,我们评估了可以从皮层信号正确识别每个单词中的各个音素的程度。主要结果。在对所有音素进行分类时,我们对音素的分类精度最高为36%,而对单个音素的精度最高为63%。此外,错误分类的音素会遵循语音学文献中描述的发音组织,以帮助对整个单词进行分类。音素发作的精确时间对齐对于分类成功至关重要。意义。我们确定了有助于分类的特定时空特征,可以指导将来的应用。单词识别等效于高达3.0位s〜(-1)(33.6个单词min〜(-1))的信息传输速率,支持对BCI控制的语音清晰度的追求。

著录项

  • 来源
    《Journal of neural engineering》 |2014年第3期|035015.1-035015.8|共8页
  • 作者单位

    Bioengineering, University of Illinois at Chicago, 851 S. Morgan Street, Chicago, IL 60607, USA;

    Bioengineering, University of Illinois at Chicago, 851 S. Morgan Street, Chicago, IL 60607, USA;

    Neurology, Northwestern University, 303 E. Superior Street, Chicago, IL 60611, USA;

    Neurology, Northwestern University, 303 E. Superior Street, Chicago, IL 60611, USA;

    Neurology, Northwestern University, 303 E. Superior Street, Chicago, IL 60611, USA;

    Neurology, Northwestern University, 303 E. Superior Street, Chicago, IL 60611, USA;

    Neurology, Mayo Clinic,4500 San Pablo Road, Jacksonville, FL 32224, USA;

    Electrical and Computer Engineering, Old Dominion University, Norfolk, VA 23529, USA;

    Neurology, Northwestern University, 303 E. Superior Street, Chicago, IL 60611, USA,Physiology, Northwestern University, 303 E. Superior Street, Chicago, IL 60611, USA,Physical Medicine and Rehabilitation, Northwestern University, 303 E. Superior Street, Chicago,IL 60611, USA;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    electrocorticography; speech production; phonemes; linear discriminant analysis; brain-computer interface;

    机译:皮质脑电图语音制作;音素线性判别分析;脑机接口;

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