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Decoding fNIRS based imagined movements associated with speed and force for a brain-computer interface

机译:解码基于FNIRS的想象式动作与脑电电脑界面的速度和力相关联

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摘要

Functional near-infrared spectroscopy (fNIRS) is an emerging non-invasive technology applied in brain-computer interface (BCI). This study investigates fNIRS based imagined hand-clenching tasks, indicating that the combinations of speed and force have distinct patterns which can be decoded to develop a BCI system. Twelve healthy participants are instructed to perform imagined left or right hand-clenching tasks; oxy-hemoglobin (HbO2) and deoxy-hemoglobin (Hb) concentrations are acquired from motor cortex using a multi-channel fNIRS system. Feature selection method based on mutual information is employed to select the optimal features for classification, and support vector machine (SVM) is used as a classifier resulting in average accuracies of 84.9% and 86.1% for classifying left and right imagined movements. Compared with traditional fNIRS-BCI system, this study provides a possibility to generate a new control pattern for brain-controlled robots, e.g., speed or force control. There is a potential application to combine fNIRS-BCI system with exoskeleton for rehabilitation.
机译:功能近红外光谱(Fnirs)是脑电脑界面(BCI)中的新兴的非侵入性技术。本研究研究了基于FNIRS的想象式手握式任务,表明速度和力的组合具有可以解码以开发BCI系统的不同模式。指示十二个健康的参与者进行了想象的左手或右手握紧任务;使用多通道Fnirs系统从电动机皮质中获取氧杂红蛋白(HBO2)和脱氧 - 血红蛋白(HB)浓度。采用基于互信息的特征选择方法选择分类的最佳特征,并且支持向量机(SVM)用作分类器,导致平均精度为84.9%和86.1%,用于分类左右图像的动作。与传统的FNIRS-BCI系统相比,该研究提供了为脑控制机器人提供新的控制模式,例如,速度或力控制。潜在的应用程序将Fnirs-BCI系统与外骨骼组合以进行康复。

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