Vannucci Lorenzo, Falotico Egidio, Laschi Cecilia
The BioRobotics Institute, Scuola Superiore Sant'AnnaPontedera, Italy.
Front Neurosci. 2017 Jun 14;11:341. doi: 10.3389/fnins.2017.00341. eCollection 2017.
Connecting biologically inspired neural simulations to physical or simulated embodiments can be useful both in robotics, for the development of a new kind of bio-inspired controllers, and in neuroscience, to test detailed brain models in complete action-perception loops. The aim of this work is to develop a fully spike-based, biologically inspired mechanism for the translation of proprioceptive feedback. The translation is achieved by implementing a computational model of neural activity of type Ia and type II afferent fibers of muscle spindles, the primary source of proprioceptive information, which, in mammals is regulated through fusimotor activation and provides necessary adjustments during voluntary muscle contractions. As such, both static and dynamic γ-motoneurons activities are taken into account in the proposed model. Information from the actual proprioceptive sensors (i.e., motor encoders) is then used to simulate the spindle contraction and relaxation, and therefore drive the neural activity. To assess the feasibility of this approach, the model is implemented on the NEST spiking neural network simulator and on the SpiNNaker neuromorphic hardware platform and tested on simulated and physical robotic platforms. The results demonstrate that the model can be used in both simulated and real-time robotic applications to translate encoder values into a biologically plausible neural activity. Thus, this model provides a completely spike-based building block, suitable for neuromorphic platforms, that will enable the development of sensory-motor closed loops which could include neural simulations of areas of the central nervous system or of low-level reflexes.
将受生物启发的神经模拟与物理或模拟实体相连接,在机器人技术中对于开发新型受生物启发的控制器很有用,在神经科学中对于在完整的动作 - 感知循环中测试详细的大脑模型也很有用。这项工作的目的是开发一种完全基于脉冲的、受生物启发的本体感觉反馈转换机制。这种转换是通过实现肌梭Ia型和II型传入纤维神经活动的计算模型来实现的,肌梭是本体感觉信息的主要来源,在哺乳动物中,它通过梭外肌运动神经元激活进行调节,并在自主肌肉收缩期间提供必要的调整。因此,所提出的模型考虑了静态和动态γ运动神经元的活动。然后利用来自实际本体感觉传感器(即电机编码器)的信息来模拟肌梭的收缩和舒张,从而驱动神经活动。为了评估这种方法的可行性,该模型在NEST脉冲神经网络模拟器和SpiNNaker神经形态硬件平台上实现,并在模拟和物理机器人平台上进行测试。结果表明,该模型可用于模拟和实时机器人应用中,并将编码器值转换为生物学上合理的神经活动。因此,该模型提供了一个完全基于脉冲的构建模块,适用于神经形态平台,这将有助于开发感觉运动闭环,其中可能包括中枢神经系统区域或低级反射的神经模拟。