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Spike train analysis in a digital neuromorphic system of cutaneous mechanoreceptor

机译:皮肤机械感受器数字神经形态系统中的突波训练分析

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In this research, we develop a neuromorphic system to study neural signaling at the level of first order tactile afferents which are slowly adapting type I (SA1) and rapidly adapting type I (RA1) mechanoreceptors. Considering, the linearized Izhikevich model, two digital circuits are developed for both afferents and are executed on the field programmable gate array (FPGA). After implementation of the digital circuits, we investigate how much information is encoded by this hardware-based neuromorphic system. Indeed, the artificial spiking sequences are evoked by applying different force profiles to the sensor connected to the FPGA. Next, the obtained neural responses are classified based on the two fundamental neural coding for brain information processing: spike timing and rate coding. Considering temporal coding, k-nearest neighbors (kNN), support vector machine (SVM) and Decision Tree algorithms are used for forces recognition using acquired artificial spike patterns. The results of classification show that the digital RA1 is susceptible to signal variations, while the digital SA1, on the other hand, is sensitive to the ramp and hold inputs. Furthermore, these responses are better distinguishable to different stimuli when both artificial SA1 and RA1 afferents are regarded. These results, which are functionally compatible with biological observations, yield the promise for fabrication and development of new tactile sensing modules to be employed in bio-robotic and prosthetic applications. (C) 2019 Elsevier B.V. All rights reserved.
机译:在这项研究中,我们开发了一个神经形态系统来研究一级适应性I型(SA1)和快速适应性I型(RA1)机械感受器的一级触觉传入神经的信号传递。考虑到线性化的Izhikevich模型,两个数字电路都针对这两个输入端进行了开发,并在现场可编程门阵列(FPGA)上执行。在实现数字电路之后,我们将研究此基于硬件的神经形态系统编码了多少信息。确实,通过向连接到FPGA的传感器施加不同的力分布图来诱发人工脉冲序列。接下来,基于用于大脑信息处理的两种基本神经编码对获得的神经反应进行分类:尖峰定时和速率编码。考虑到时间编码,将k最近邻(kNN),支持向量机(SVM)和决策树算法用于使用获取的人工峰值模式进行力识别。分类结果表明,数字RA1易受信号变化的影响,而数字SA1则对斜坡和保持输入敏感。此外,当同时考虑人工SA1和RA1传入时,这些响应可以更好地区分不同的刺激。这些结果与生物学观察在功能上兼容,为制造和开发用于生物机器人和假肢应用的新型触觉传感模块提供了希望。 (C)2019 Elsevier B.V.保留所有权利。

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