Brain machine interface: Motor imagery recognition with different signal length representations

C. Hema, M. Paulraj, Sazali Yaacob, A. H. Adom, R. Nagarajan
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Abstract

This work investigates how signal representations affect the performance of a motor imagery recognition system, specifically we investigate on recognition accuracy and computational time of a brain machine interface designed using motor imagery. Experiments show that the signal length should not be larger than a critical range for good recognition accuracy. The results presented here is a part of our work on the design and development of a brain machine interface to operate a wheelchair. EEG motor imagery signals recorded from the motor cortex area using non-invasive electrodes, are used for recognition of four tasks namely, left, right, forward and stop. Experiments are conducted for 12 signal representations from signal lengths varying from 3s to 0.25s. From the results it is observed that good recognition accuracies (93.2% –94.2%) are obtainable for 2s to 3s signal representations
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脑机接口:不同信号长度表示的运动图像识别
这项工作研究了信号表征如何影响运动图像识别系统的性能,特别是我们研究了使用运动图像设计的脑机接口的识别精度和计算时间。实验表明,为了获得较好的识别精度,信号长度不应大于一个临界范围。这里展示的结果是我们设计和开发操作轮椅的脑机接口工作的一部分。利用非侵入性电极从运动皮层区域记录脑电图运动图像信号,用于识别左、右、前进和停止四种任务。实验对信号长度从3秒到0.25秒的12种信号表示形式进行了实验。从结果中可以观察到,对于2s到3s的信号表示,可以获得良好的识别准确率(93.2% -94.2%)
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