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Classification of hand posture from electrocorticographic signals recorded during varying force conditions

机译:根据在不同受力情况下记录的脑电图信号对手势进行分类

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In the presented work, standard and high-density electrocorticographic (ECoG) electrodes were used to record cortical field potentials in three human subjects during a hand posture task requiring the application of specific levels of force during grasping. We show two-class classification accuracies of up to 80% are obtained when classifying between two-finger pinch and whole-hand grasp hand postures despite differences in applied force levels across trials. Furthermore, we show that a four-class classification accuracy of 50% is achieved when predicting both hand posture and force level during a two-force, two-hand-posture grasping task, with hand posture most reliably predicted during high-force trials. These results suggest that the application of force plays a significant role in ECoG signal modulation observed during motor tasks, emphasizing the potential for electrocorticography to serve as a source of control signals for dexterous neuroprosthetic devices.
机译:在提出的工作中,标准和高密度皮层(ECoG)电极用于在手势操作中记录三个人类受试者的皮质场电势,要求在抓握过程中施加特定水平的力。我们展示了在两指捏法和全手握住手姿势之间进行分类时,尽管在整个试验中施加的力水平有所不同,但仍可获得高达80%的两类分类精度。此外,我们表明,在两手,两手姿势的抓握任务中预测手的姿势和力水平时,可以达到50%的四级分类精度,而在高压力试验中,最可靠地预测手的姿势。这些结果表明,施加力在运动任务期间观察到的ECoG信号调制中起着重要作用,强调了皮层脑电图作为灵巧神经修复设备控制信号源的潜力。

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