Robust classification of correlated patterns with a neuromorphic VLSI network of spiking neurons

S. Mitra, G. Indiveri, Stefano Fusi
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引用次数: 4

Abstract

We demonstrate robust classification of correlated patterns of mean firing rates, using a VLSI network of spiking neurons and spike-driven plastic synapses. The synapses have bistable weights over long time-scales and the transitions from one stable state to the other are driven by the pre and postsynaptic spiking activity. Learning is supervised by a teacher signal which provides an extra current to the output neurons during the training phase. This current steers the activity of the neurons toward the desired value, and the synaptic weights are modified only if the current generated by the plastic synapses does not match the one provided by the teacher signal. If the neuron's response matches the desired output, the synaptic updates are blocked. Such a feature allows the neurons to classify spatial patterns of mean firing rates, even when they have significant correlations. If synaptic updates are stochastic, as in the case of random Poisson input spike trains, the classification performance can be further improved by combining the outcome of multiple neurons together.
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基于脉冲神经元神经形态VLSI网络的相关模式鲁棒分类
我们使用一个由尖峰神经元和尖峰驱动的塑料突触组成的VLSI网络,展示了平均放电率相关模式的鲁棒分类。突触在长时间尺度上具有双稳定的权重,从一种稳定状态到另一种稳定状态的转变是由突触前和突触后尖峰活动驱动的。在训练阶段,教师信号向输出神经元提供额外的电流,以监督学习。这种电流将神经元的活动引导到期望的值,只有当塑料突触产生的电流与教师信号提供的电流不匹配时,突触权重才会被修改。如果神经元的反应与期望的输出相匹配,突触更新就会被阻断。这样的特征允许神经元对平均放电率的空间模式进行分类,即使它们具有显著的相关性。如果突触更新是随机的,如随机泊松输入尖峰序列的情况,则可以通过将多个神经元的结果组合在一起进一步提高分类性能。
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