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Towards a real-time interface between a biomimetic model of sensorimotor cortex and a robotic arm

机译:迈向感觉运动皮层仿生模型与机械臂之间的实时接口

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摘要

Brain-machine interfaces can greatly improve the performance of prosthetics. Utilizing biomimetic neuronal modeling in brain machine interfaces (BMI) offers the possibility of providing naturalistic motor-control algorithms for control of a robotic limb. This will allow finer control of a robot, while also giving us new tools to better understand the brain’s use of electrical signals. However, the biomimetic approach presents challenges in integrating technologies across multiple hardware and software platforms, so that the different components can communicate in real-time. We present the first steps in an ongoing effort to integrate a biomimetic spiking neuronal model of motor learning with a robotic arm. The biomimetic model (BMM) was used to drive a simple kinematic two-joint virtual arm in a motor task requiring trial-and-error convergence on a single target. We utilized the output of this model in real time to drive mirroring motion of a Barrett Technology WAM robotic arm through a user datagram protocol (UDP) interface. The robotic arm sent back information on its joint positions, which was then used by a visualization tool on the remote computer to display a realistic 3D virtual model of the moving robotic arm in real time. This work paves the way towards a full closed-loop biomimetic brain-effector system that can be incorporated in a neural decoder for prosthetic control, to be used as a platform for developing biomimetic learning algorithms for controlling real-time devices.
机译:脑机接口可以大大提高假肢的性能。在脑机接口(BMI)中使用仿生神经元建模提供了提供自然运动控制算法来控制机器人肢体的可能性。这样不仅可以更好地控制机器人,还可以为我们提供新的工具,以更好地了解大脑对电信号的使用。但是,仿生方法在跨多个硬件和软件平台集成技术方面提出了挑战,因此不同的组件可以实时通信。我们提出了正在进行的努力,以将运动学习的仿生尖峰神经元模型与机械臂集成在一起的第一步。仿生模型(BMM)用于在需要在单个目标上反复试验的运动任务中驱动简单的运动型两关节虚拟手臂。我们实时利用该模型的输出,通过用户数据报协议(UDP)接口来驱动Barrett Technology WAM机械臂的镜像运动。机械臂返回有关其关节位置的信息,然后由远程计算机上的可视化工具使用该信息实时显示移动的机械臂的逼真的3D虚拟模型。这项工作为建立完整的闭环仿生大脑执行器系统铺平了道路,该系统可以并入人工修复的神经解码器中,用作开发用于控制实时设备的仿生学习算法的平台。

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