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首页> 外文期刊>IEEE transactions on biomedical circuits and systems >Real-Time Classification of Complex Patterns Using Spike-Based Learning in Neuromorphic VLSI
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Real-Time Classification of Complex Patterns Using Spike-Based Learning in Neuromorphic VLSI

机译:在神经形态VLSI中使用基于峰值的学习对复杂模式进行实时分类

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摘要

Real-time classification of patterns of spike trains is a difficult computational problem that both natural and artificial networks of spiking neurons are confronted with. The solution to this problem not only could contribute to understanding the fundamental mechanisms of computation used in the biological brain, but could also lead to efficient hardware implementations of a wide range of applications ranging from autonomous sensory-motor systems to brain-machine interfaces. Here we demonstrate real-time classification of complex patterns of mean firing rates, using a VLSI network of spiking neurons and dynamic synapses which implement a robust spike-driven plasticity mechanism. The learning rule implemented is a supervised one: a teacher signal provides the output neuron with an extra input spike-train during training, in parallel to the spike-trains that represent the input pattern. The teacher signal simply indicates if the neuron should respond to the input pattern with a high rate or with a low one. The learning mechanism modifies the synaptic weights only as long as the current generated by all the stimulated plastic synapses does not match the output desired by the teacher, as in the perceptron learning rule. We describe the implementation of this learning mechanism and present experimental data that demonstrate how the VLSI neural network can learn to classify patterns of neural activities, also in the case in which they are highly correlated.
机译:穗序列的模式的实时分类是一个棘手的神经元的自然和人工网络都面临的计算难题。解决该问题的方法不仅有助于理解生物大脑中使用的基本计算机制,而且还可以导致从自主感觉运动系统到脑机接口的各种应用的有效硬件实现。在这里,我们演示了使用尖峰神经元和动态突触的VLSI网络实现平均发射速率的复杂模式的实时分类,该网络实现了强大的峰值驱动可塑性机制。实施的学习规则是有监督的:教师信号在训练过程中为输出神经元提供额外的输入峰值训练,与代表输入模式的峰值训练平行。教师信号仅指示神经元是应以高速率还是低速率来响应输入模式。学习机制仅在所有受刺激的塑料突触产生的电流与教师期望的输出不匹配时才修改突触权重,就像在感知器学习规则中一样。我们描述了这种学习机制的实现,并提供了实验数据,这些实验数据演示了VLSI神经网络如何学习对神经活动的模式进行分类,即使它们之间具有高度相关性。

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