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EEG-based Classification of Bilingual Unspoken Speech using ANN

机译:基于EEG的双语未言名讲话的分类使用ANN

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The ability to interpret unspoken or imagined speech through electroencephalography (EEG) is of therapeutic interest for people suffering from speech disorders and 'locked-in' syndrome. It is also useful for brain-computer interface (BCI) techniques not involving articulatory actions. Previous work has involved using particular words in one chosen language and training classifiers to distinguish between them. Such studies have reported accuracies of 40-60% and are not ideal for practical implementation. Furthermore, in today's multilingual society, classifiers trained in one language alone might not always have the desired effect. To address this, we present a novel approach to improve accuracy of the current model by combining bilingual interpretation and decision making. We collect data from 5 subjects with Hindi and English as primary and secondary languages respectively and ask them 20 'Yes'/'No' questions ('Haan'/'Na' in Hindi) in each language. We choose sensors present in regions important to both language processing and decision making. Data is preprocessed, and Principal Component Analysis (PCA) is carried out to reduce dimensionality. This is input to Support Vector Machine (SVM), Random Forest (RF), AdaBoost (AB), and Artificial Neural Networks (ANN) classifiers for prediction. Experimental results reveal best accuracy of 85.20% and 92.18% for decision and language classification respectively using ANN. Overall accuracy of bilingual speech classification is 75.38%.
机译:通过脑电图(EEG)解释未说出口或想象的演讲的能力对患有语音障碍和“锁定”综合征的人来说是治疗兴趣。它对脑电电脑界面(BCI)技术也是有用的,不涉及明晰度行动。以前的工作涉及使用一个选定的语言和培训分类器的特定单词来区分它们。这些研究报告了40-60%的准确度,并不理想的实际实施。此外,在今天的多语种社会中,单独用一种语言培训的分类器可能并不总是具有所需的效果。为了解决这个问题,我们通过结合双语解释和决策,提出了一种提高当前模型的准确性的新方法。我们分别从印地语和英语作为主要和中学语言收集来自5个科目的数据,并在每种语言中向他们询问20'是'/'否'问题('Haan'/'Na')。我们选择在对语言处理和决策中重要的区域中存在的传感器。数据是预处理的,并进行主成分分析(PCA)以减少维度。这是输入以支持向量机(SVM),随机林(RF),Adaboost(AB)和人工神经网络(ANN)分类器的预测。实验结果揭示了分别使用ANN的决策和语言分类的最佳准确度85.20%和92.18%。双语语音分类的整体准确性为75.38%。

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