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Vowel classification using wavelet decomposition during speech imagery

机译:语音图像中基于小波分解的元音分类

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Electroencephalography (EEG) has long been used for Brain computer interface (BCI). Recent researches have proved that EEG can be also used to classify data generated in speech imagery. This classification can further be utilized to develop speech prosthesis and synthetic telepathy systems. In this paper we wanted to check whether features extracted from beta, delta and theta rhythms of EEG can be used to classify the imagined English vowel sounds. A new approach is used to differentiate among the three classes of vowel sound /a/, /u/ and `rest or no action' in pair-wise as well as `combination of two sounds (tasks)' manner. Wavelet decomposition is performed to extract features in the 0-8 Hz and 16-32 Hz range. Energy sum and energy's waveform length of the approximate and detail coefficients are used as features. The algorithm is tested on 3 subjects and results showed that indeed the data from EEG rhythms can be used for classification. The pair-wise classification accuracy was found to be 65-82.5% which is a considerable improvement over the previous classification accuracies in the range of 56-82%, reported by DaSalla [4]. The `combination of tasks' classification accuracy was found to be 81.25-98.75%.
机译:脑电图(EEG)长期用于大脑计算机接口(BCI)。最近的研究证明,EEG还可以用于对语音图像中生成的数据进行分类。该分类可以进一步用于开发语音假体和合成心灵感应系统。在本文中,我们想检查从脑电图的beta,delta和theta节奏中提取的特征是否可用于对想象中的英语元音进行分类。一种新的方法用于区分成对的元音/ a /,/ u /和“静止或无动作”这三类,以及“两种声音(任务)的组合”。执行小波分解以提取0-8 Hz和16-32 Hz范围内的特征。近似系数和细节系数的能量和和能量的波形长度用作特征。该算法在3个对象上进行了测试,结果表明,确实可以将脑电节律的数据用于分类。根据DaSalla的报道[4],发现成对分类的准确度为65-82.5%,与以前的分类准确度(56-82%)相比有相当大的提高。发现“任务组合”分类精度为81.25-98.75%。

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