Suminski Aaron J, Fagg Andrew H, Willett Francis R, Bodenhamer Matthew, Hatsopoulos Nicholas G
Annu Int Conf IEEE Eng Med Biol Soc. 2013;2013:1583-6. doi: 10.1109/EMBC.2013.6609817.
Traditional brain machine interfaces for control of a prosthesis have typically focused on the kinematics of movement, rather than the dynamics. BMI decoders that extract the forces and/or torques to be applied by a prosthesis have the potential for giving the patient a much richer level of control across different dynamic scenarios or even scenarios in which the dynamics of the limb/environment are changing. However, it is a challenge to train a decoder that is able to capture this richness given the small amount of calibration data that is usually feasible to collect a priori. In this work, we propose that kinetic decoders should be continuously calibrated based on how they are used by the subject. Both intended hand position and joint torques are decoded simultaneously as a monkey performs a random target pursuit task. The deviation between intended and actual hand position is used as an estimate of error in the recently decoded joint torques. In turn, these errors are used to drive a gradient descent algorithm for improving the torque decoder parameters. We show that this approach is able to quickly restore the functionality of a torque decoder following substantial corruption with Gaussian noise.
传统的用于控制假肢的脑机接口通常专注于运动的运动学,而非动力学。能够提取假肢所需施加的力和/或扭矩的脑机接口解码器,有潜力让患者在不同动态场景甚至肢体/环境动力学正在变化的场景中获得更丰富的控制水平。然而,鉴于通常在先验情况下可行收集的校准数据量较少,训练一个能够捕捉这种丰富性的解码器是一项挑战。在这项工作中,我们提出动力学解码器应根据受试者的使用方式进行持续校准。当猴子执行随机目标追踪任务时,同时对预期的手部位置和关节扭矩进行解码。预期手部位置与实际手部位置之间的偏差被用作最近解码的关节扭矩中误差的估计值。反过来,这些误差被用于驱动梯度下降算法以改进扭矩解码器参数。我们表明,这种方法能够在高斯噪声严重破坏后快速恢复扭矩解码器的功能。