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Adaptive Gain Control for Spike-Based Map Communication in a Neuromorphic Vision System

机译:神经形态视觉系统中基于峰值的地图通信的自适应增益控制

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摘要

To support large numbers of model neurons, neuromorphic vision systems are increasingly adopting a distributed architecture, where different arrays of neurons are located on different chips or processors. Spike-based protocols are used to communicate activity between processors. The spike activity in the arrays depends on the input statistics as well as internal parameters such as time constants and gains. In this paper, we investigate strategies for automatically adapting these parameters to maintain a constant firing rate in response to changes in the input statistics. We find that under the constraint of maintaining a fixed firing rate, a strategy based upon updating the gain alone performs as well as an optimal strategy where both the gain and the time constant are allowed to vary. We discuss how to choose the time constant and propose an adaptive gain control mechanism whose operation is robust to changes in the input statistics. Our experimental results on a mobile robotic platform validate the analysis and efficacy of the proposed strategy.
机译:为了支持大量的模型神经元,神经形态视觉系统越来越多地采用分布式体系结构,其中神经元的不同阵列位于不同的芯片或处理器上。基于尖峰的协议用于在处理器之间通信活动。阵列中的尖峰活动取决于输入统计数据以及内部参数,例如时间常数和增益。在本文中,我们研究了根据输入统计数据的变化自动调整这些参数以维持恒定点火率的策略。我们发现,在保持固定发射率的约束下,仅基于更新增益的策略就可以执行,同时还可以使增益和时间常数都发生变化的最优策略也可以执行。我们讨论了如何选择时间常数,并提出了一种自适应增益控制机制,该机制的操作对输入统计数据的变化具有鲁棒性。我们在移动机器人平台上的实验结果验证了所提出策略的分析和有效性。

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