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Examining Temporal Variations in Recognizing Unspoken Words Using EEG Signals

机译:使用EEG信号检查识别未说出口单位的时间变化

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Studies on recognising unspoken speech with the use of electroencephalographic (EEG) signals vary in their designs. The participants are either asked to imagine unspoken speech within a specific time frame, or alternatively indicate the start and end of the imagined speech. Optimizing the length and training size of imagined speech is important to improve the rate and speed of recognizing unspoken speech in on-line applications. In this study, we recorded EEG data when the participants performed unspoken speech of five words using two technologies: (1) marking the start and end of the trial by using mouse clicks and (2) performing the imagination in a four-second fixed time window. Four classifiers were trained in all experiment parts: support vector machine, naive bayes, random forest, and linear discriminate analysis. The results show that the best time frame is 3.5-4 seconds length. Moreover, the increase in training size improve the average classification accuracy. However, this improvement becomes slight between 125-175 total training trials. The training data can be recorded in parts, however, the required training size should be increased to have better classification accuracy. In all analysis parts, random forest classifier shows better results among the other classifiers.
机译:使用脑电图(EEG)信号在其设计中识别出令人表现出口言论的研究。要么被要求将参与者想象在特定时间范围内的未言话语音,或者或者表示想象的语音的开始和结束。优化想象的语音的长度和培训大小对于提高在线应用中识别令人难以说话的言论的速率和速度非常重要。在这项研究中,当参与者使用两种技术执行了五个单词的言语言论时,我们记录了EEG数据:(1)通过使用鼠标点击和(2)在四秒钟固定时间中执行想象力,标记试验的开始和结束窗户。所有实验零件培训了四个分类器:支持向量机,天真贝叶斯,随机森林和线性鉴别分析。结果表明,最佳时间框架为3.5-4秒。此外,训练规模的增加提高了平均分类准确性。然而,这种改善变得略有培训培训试验之间。培训数据可以以零件记录,但是,应增加所需的训练规模以具有更好的分类准确性。在所有分析部分中,随机林分类器在其他分类器中显示出更好的结果。

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