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Adaptive multimodal biosignal control for exoskeleton supported stroke rehabilitation

机译:适应性多模态生物生物控制,用于外骨骼支持的笔画康复

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A relevant issue of neuro-interfacing wearable robots in rehabilitation is the necessity to have training data, since the collection of sufficient data from patients within a reasonable recording time is not always possible. However, the use of historic data (e.g., session-to-session transfer, subject-to-subject transfer) can often lead to a reduction in classification performance which is affected by the selection of the historic data (i.e., which historic data was chosen for transfer). In this paper, we analyze two approaches to handle this reduction. First, we used incremental algorithms that can be adapted to the current session when trainable components (the spatial filter and the classifier) are transferred between different sessions. Second, we increased the number of sessions to learn more generalized models. To evaluate the approaches, we used electroencephalographic data that was recorded as training data for demonstrating our neurointerfacing wearable robot in the application of upper-body sensorimotor rehabilitation. The data was collected from the same healthy subject on 14 different days (14 sessions). Our results showed that the use of a mixture of training sessions improved the classification performance. Further, we could show that the adaptive approaches contributed to less variability in performance that allows the system to be more robust. Hence, one can efficiently use both approaches (i.e., adapting and generalizing the models) depending on how much training data is available. Finally, the analyzed approaches are very promising to increase system applicability in upper-body sensorimotor robotic rehabilitation.
机译:在康复中有一个相关的神经接口可穿戴机器人的问题是有必要具有培训数据,因为在合理的记录时间内从患者收集足够的数据并不总是可能的。然而,使用历史数据(例如,会话到会话传输的主题转移)通常可以导致受历史数据选择影响的分类性能的降低(即,哪些历史数据是选择转移)。在本文中,我们分析了两种处理这种减少的方法。首先,我们使用的增量算法,当在不同的会话之间传输可培训组件(空间过滤器和分类器)时,可以适应当前会话。其次,我们增加了学习更多普遍模型的会话数量。为了评估方法,我们使用被记录为培训数据的脑电图数据,以便在应用上身体感觉器康复中展示我们的神经驾驶佩戴机器人。这些数据在14个不同的日子(14个会议)中从相同的健康科目中收集。我们的研究结果表明,使用培训课程混合的使用改善了分类性能。此外,我们可以表明,自适应方法促成了允许系统更强大的性能的较少的可变性。因此,可以有效地使用两种方法(即,调整和概括模型),具体取决于有多少训练数据。最后,分析的方法非常有希望提高上半身感官电池机器人康复中的系统适用性。

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