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Brain computer interface design and implementation to identify overt and covert speech

机译:脑电脑界面设计与实现,以识别公开和隐蔽的演讲

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Brain computer interface based-on silent speech decoding from electroencephalography signal is one of the purposes of this article. Brain computer interface help the patients with locked-in syndrome to communicate with the world around them. In addition to the silent speech decoding from electroencephalography, also overt and semi-overt speech decoding from electroencephalography have been investigated. The collected data includes three syllables (/ka:/, /fi:/ and /su:/), 6 vowels (/?/, /e/, /au/, /a:/, /i:/ and /u:/) and resting in Persian. Database was collected based on 3 protocols from 5 subjects. The 3 protocols are including overt speech without vibration of the vocal cords, semi-overt speech (vocal track forming without pronouncing) and covert (silent) speech. Feature vectors include empirical mode decomposition combinations with common spatial patterns filters, were extracted from electroencephalography signals. Classification done by non-linear support vector machines. There was a significant difference between the results of extraction 5 feature vectors include energy, variance, zero crossing rate, skewness and kurtosis against the only variance feature vector from the common spatial patterns filtered data (on average and p-value ≤ 0.05, about 3% accuracy improvement). There was no significant difference between the results of vowels and syllables databases. There was also no significant difference between the results of three protocols, which indicates adequacy and advantage of the “covert speech” protocol.
机译:脑计算机接口的基于对无声语音从脑电图信号进行解码是本文的目的之一。脑机接口帮助患者闭锁综合征与他们周围的世界沟通。除了无声语音从脑电图解码,还公开和半公开的语音从脑电图解码进行了研究。所收集的数据包括三个音节(/ KA:/,/ FI:/和/ SU:/),6个元音(/ /,/ E /,/ AU /,/ A:/?,/ I:/和/ U :/)和波斯语休息。数据库的基础上,从5个科3个协议收集。 3项协议,包括明显的语音,而不声带振动,半公开的语音(声音音轨形成无发音)和隐蔽(无声)的语音。特征向量包括与公共空间模式滤波器经验模式分解组合,从脑电图信号中提取。分类由非线性支持向量机来完成。有萃取5特征向量的结果之间的显著差异包括能量,方差,过零率,偏度和峰度对来自过滤数据中的公共空间模式的唯一方差特征矢量(平均和p值≤0.05,约3 %精度的提高)。有元音和音节数据库的结果之间没有显著差异。还有三种协议的结果之间没有显著差异,这表明“秘密讲话”协议的充分性和优势。

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