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Towards sign language recognition using EEG-based motor imagery brain computer interface

机译:使用基于EEG的电动机图像脑电脑界面进行手语识别

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While BCIs have a wide range of applications, the majority of research in the field is concentrated on addressing the issues of controlling and communicating for paralysed patients. This research seeks to examine-through the completion of offline experimentation-a particular aspect; that is, the likelihood of linguistic communication with those paralysed patients, merely by means of neural activity in the brain. Electroencephalogram (EEG) brain activities obtained whilst imagining execution of six one-handed signs from American Sign Language (ASL) were investigated. Upon reviewing the findings, it is demonstrated that EEG signal analysis can be used efficiently to identify hand movement of sign language from the brain. SVM and LDA both showed the highest accuracy, achieving around 75% correct when the Entropy feature type was examined.
机译:虽然BCIS具有广泛的应用,但该领域的大部分研究都集中在解决控制和沟通瘫痪患者的问题。该研究旨在考验 - 完成离线实验 - 特定方面;也就是说,与那些瘫痪患者的语言通信的可能性仅通过大脑中的神经活动。在想象于从美国手语(ASL)执行六个单手标志的执行时获得的脑电图(EEG)脑活动。在审查发现后,证明EEG信号分析可以有效地用于识别来自大脑的手语的手动运动。 SVM和LDA都显示出最高精度,在检查熵特征类型时,在熵特征类型达到75%的正确性。

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