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Emergent Auditory Feature Tuning in a Real-Time Neuromorphic VLSI System

机译:实时神经形态VLSI系统中的紧急听觉特征调整

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摘要

Many sounds of ecological importance, such as communication calls, are characterized by time-varying spectra. However, most neuromorphic auditory models to date have focused on distinguishing mainly static patterns, under the assumption that dynamic patterns can be learned as sequences of static ones. In contrast, the emergence of dynamic feature sensitivity through exposure to formative stimuli has been recently modeled in a network of spiking neurons based on the thalamo-cortical architecture. The proposed network models the effect of lateral and recurrent connections between cortical layers, distance-dependent axonal transmission delays, and learning in the form of Spike Timing Dependent Plasticity (STDP), which effects stimulus-driven changes in the pattern of network connectivity. In this paper we demonstrate how these principles can be efficiently implemented in neuromorphic hardware. In doing so we address two principle problems in the design of neuromorphic systems: real-time event-based asynchronous communication in multi-chip systems, and the realization in hybrid analog/digital VLSI technology of neural computational principles that we propose underlie plasticity in neural processing of dynamic stimuli. The result is a hardware neural network that learns in real-time and shows preferential responses, after exposure, to stimuli exhibiting particular spectro-temporal patterns. The availability of hardware on which the model can be implemented, makes this a significant step toward the development of adaptive, neurobiologically plausible, spike-based, artificial sensory systems.
机译:许多具有生态重要性的声音(例如通信呼叫)都具有随时间变化的频谱。然而,迄今为止,大多数神经形态听觉模型都集中在区分静态模式上,前提是可以将动态模式学习为静态模式的序列。相比之下,最近在丘脑皮质结构的尖峰神经元网络中对通过暴露于形成性刺激而产生的动态特征敏感性进行了建模。拟议的网络对皮质层之间的侧向和循环连接,距离相关的轴突传输延迟以及以峰值定时依赖可塑性(STDP)形式学习的效果进行建模,该效果以刺激驱动的方式改变网络的连接方式。在本文中,我们演示了如何在神经形态硬件中有效地实现这些原理。在此过程中,我们解决了神经形态系统设计中的两个主要问题:多芯片系统中基于事件的实时异步通信,以及提出的神经计算可塑性基础的神经计算原理在混合模拟/数字VLSI技术中的实现。动态刺激的处理。结果是一个硬件神经网络,它可以实时学习,并在暴露后显示出对表现出特定光谱时间模式的刺激的优先响应。可以在其上实施模型的硬件的可用性,使这朝着开发自适应的,神经生物学上合理的,基于尖峰的人工感觉系统迈出了重要的一步。

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