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Analysing Vibrotactually Stimulated EEG Signals to Comprehend Object Shapes

机译:分析振动刺激的脑电信号以了解物体的形状

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Tactile feedback has the capability of reducing the workload on the visual channel, during visual feedback in brain-computer interfaces (BCIs). It is requisite to analyse the brain signals corresponding to the tactile stimulations. This work is aimed at analysing the brain signals while the users are vibrotactually stimulated. The brain signals are acquired non-invasively by electroencephalography (EEG), while brushless coin-type vibration motors are actuated in particular patterns to convey the object shape information on subjects' skin surface in form of vibrations. The acquired EEG signals are pre-processed to eliminate the effect of various types of noises and to extract the EEG signals corresponding to relevant frequency bands. Adaptive autoregressive (AAR) parameters are extracted from the pre-processed EEG signals and are finally classified by Naive Bayesian $(NB)$ approach, in order to recognize the vibratotactually stimulated object shapes from brain signals. In addition to the classifier output, subjects' verbal responses about the object shape they perceived are also noted for validation. Three successive sessions of shape recognition from vibrotactile pattern show an improvement in EEG classification accuracy from 63.75% to 74.37%, and also depicted learning of the stimulus from subjects' psychological response which is observed to increase from 75% to 95%. This observation substantiates the learning of vibrotactile stimulation in user over the sessions which in turn increases the system efficacy.
机译:在脑机接口(BCI)中进行视觉反馈时,触觉反馈具有减少视觉通道工作量的能力。必须分析与触觉刺激相对应的脑信号。这项工作的目的是在振动刺激用户的同时分析大脑信号。脑电信号通过脑电图(EEG)进行非侵入式采集,而无刷硬币型振动电机则以特定的模式启动,从而以振动的形式在对象的皮肤表面上传递物体形状信息。对获取的EEG信号进行预处理,以消除各种类型的噪声的影响,并提取与相关频段相对应的EEG信号。从预处理的脑电信号中提取自适应自回归(AAR)参数,最后通过朴素贝叶斯(NB)$方法对其进行分类,以便从脑信号中识别出振动触觉刺激的物体形状。除分类器输出外,还应注意受试者对他们感知到的物体形状的口头反应,以进行验证。从振动触觉模式连续三个阶段的形状识别显示脑电图分类准确度从63.75%提高到74.37%,并且还描绘了从受试者的心理反应中学习刺激的过程,观察到该刺激从75%增加到95%。该观察结果证实了用户在使用过程中对触觉刺激的学习,这反过来又增加了系统功效。

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