Spiking Continuous Attractor Neural Networks with Spike Frequency Adaptation for Anticipative Tracking

Liutao Yu, Tianhao Chu, Zhao Zhao, Yuanyuan Mi, Yuchao Yang, Si Wu
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引用次数: 1

Abstract

Continuous attractor neural network (CANN) is a canonical model for neural information representation and processing, which has been applied to describe the encoding of continuous features, such as orientation, head direction and spatial location in neural systems. Specifically, theoretical studies based on a firing-rate model have found that a CANN with negative feedback, such as spike frequency adaptation (SFA), has the capability of tracking a continuously moving stimulus anticipatively. In this study, facing the booming development of neuromorphic computing using spiking neural networks (SNNs), we built a spiking continuous attractor neural network (S-CANN) with SFA to implement anticipative tracking. Further, we simplified the model, in terms of connection weights, external inputs, and network size, to facilitate its implementation with neuromorphic hardware.
基于脉冲频率自适应的脉冲连续吸引子神经网络
连续吸引子神经网络(CANN)是一种典型的神经信息表示和处理模型,已被用于描述神经系统中方向、头部方向和空间位置等连续特征的编码。具体而言,基于发射速率模型的理论研究发现,具有负反馈的CANN,如尖峰频率自适应(SFA),具有预期跟踪连续移动刺激的能力。在本研究中,面对突峰神经网络(SNNs)神经形态计算的蓬勃发展,我们利用SFA构建了一个突峰连续吸引子神经网络(S-CANN)来实现预期跟踪。此外,我们在连接权重、外部输入和网络大小方面简化了模型,以方便其在神经形态硬件上的实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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