手部三维轨迹估计在脑机接口中的应用

Rohit Gupta, Amit Bhongade, T. Gandhi
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引用次数: 1

摘要

最先进的脑机接口(BCI)利用离散或基于模型的控制策略进行外部设备控制。然而,为了实现高效无缝的控制,需要一种连续的控制策略。为了实现这一目标,控制参数的连续估计需要最小的延迟。它将提高精神控制假肢、外骨骼和机械臂在使用中的性能和可接受性。本文尝试利用多通道脑电图(EEG)信号在三维空间中估计手部运动轨迹。该模型利用时滞多输入多出神经网络对轨迹进行连续估计。该模型可以生成高密度的估计轨迹流,非常适合于控制应用。该模型已在12个受试者的数据集上进行了不同频率范围/频带的脑电信号测试。在充分利用脑电信号整个频率范围的情况下,该模型的估计精度为0.638±0.030,一致性为0.654±0.030。该模型在二维空间的弹道估计优于三维空间的弹道估计。所建立的模型可直接用于刨床机器人或任何具有二自由度的上肢辅助和康复装置的控制。
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Hand 3D Trajectory Estimation for BCI Application
The state of art Brain-computer interface (BCI) utilized discrete or model-based control strategies for external device control. However, for efficient and seamless control a continuous control strategy is required. In order to achieve this continuous estimation of control parameters is required with minimum delay. It will improve the performance as well as acceptability of the mind-controlled prosthesis, exoskeleton and robotic arm among the uses. In this research paper, an attempt had been made to estimate the human hand trajectory in 3D space using multichannel electroencephalogram (EEG) signals. The proposed model utilized a time-delayed multi-input multi-out neural network to estimate the trajectories in a continuous manner. The developed model is well suited for control applications as it generates a high-density of estimated trajectory stream. The developed model has been tested over the dataset of 12 subjects for different frequency ranges/bands of EEG signal. The developed model shows the best estimation accuracy as 0.638±0.030 and consistency of estimation as 0.654±0.030, if the entire frequency range of the EEG signal has been utilized. The developed model depicted better performance if utilized for trajectory estimation in 2D space rather than 3D space. The developed model can be directly utilized for planer robot control or any upper limb assistive and rehabilitative device with 2DoF.
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