Salimi-Nezhad Nima, Ilbeigi Erfan, Amiri Mahmood, Falotico Egidio, Laschi Cecilia
Medical Biology Research Center, Kermanshah University of Medical Sciences, Kermanshah, Iran.
Medical Technology Research Center, Kermanshah University of Medical Sciences, Kermanshah, Iran.
Front Neurosci. 2020 Jan 14;13:1330. doi: 10.3389/fnins.2019.01330. eCollection 2019.
In the present research, we explore the possibility of utilizing a hardware-based neuromorphic approach to develop a tactile sensory system at the level of first-order afferents, which are slowly adapting type 1 (SA-I) and fast adapting type 1 (FA-I) afferents. Four spiking models are used to mimic neural signals of both SA-I and FA-I primary afferents. Next, a digital circuit is designed for each spiking model for both afferents to be implemented on the field-programmable gate array (FPGA). The four different digital circuits are then compared from source utilization point of view to find the minimum cost circuit for creating a population of digital afferents. In this way, the firing responses of both SA-I and FA-I afferents are physically measured in hardware. Finally, a population of 243 afferents consisting of 90 SA-I and 153 FA-I digital neuromorphic circuits are implemented on the FPGA. The FPGA also receives nine inputs from the force sensors through an interfacing board. Therefore, the data of multiple inputs are processed by the spiking network of tactile afferents, simultaneously. Benefiting from parallel processing capabilities of FPGA, the proposed architecture offers a low-cost neuromorphic structure for tactile information processing. Applying machine learning algorithms on the artificial spiking patterns collected from FPGA, we successfully classified three different objects based on the firing rate paradigm. Consequently, the proposed neuromorphic system provides the opportunity for development of new tactile processing component for robotic and prosthetic applications.
在本研究中,我们探索了利用基于硬件的神经形态方法在一级传入神经水平开发触觉传感系统的可能性,这些一级传入神经包括慢适应1型(SA-I)和快适应1型(FA-I)传入神经。使用四种脉冲发放模型来模拟SA-I和FA-I初级传入神经的神经信号。接下来,为这两种传入神经的每个脉冲发放模型设计一个数字电路,以便在现场可编程门阵列(FPGA)上实现。然后从资源利用的角度对这四种不同的数字电路进行比较,以找到用于创建一群数字传入神经的成本最低的电路。通过这种方式,在硬件中实际测量了SA-I和FA-I传入神经的发放响应。最后,在FPGA上实现了由90个SA-I和153个FA-I数字神经形态电路组成的243个传入神经群体。FPGA还通过一个接口板从力传感器接收九个输入。因此,多个输入的数据由触觉传入神经的脉冲发放网络同时进行处理。受益于FPGA的并行处理能力,所提出的架构为触觉信息处理提供了一种低成本的神经形态结构。在从FPGA收集的人工脉冲发放模式上应用机器学习算法,我们基于发放率范式成功地对三种不同物体进行了分类。因此,所提出的神经形态系统为开发用于机器人和假肢应用的新型触觉处理组件提供了机会。