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A Neuro-Inspired System for Online Learning and Recognition of Parallel Spike Trains Based on Spike Latency and Heterosynaptic STDP

机译:一个基于神经元的系统用于基于峰值潜伏期和异突触STDP的平行峰值列车的在线学习和识别

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摘要

Humans perform remarkably well in many cognitive tasks including pattern recognition. However, the neuronal mechanisms underlying this process are not well understood. Nevertheless, artificial neural networks, inspired in brain circuits, have been designed and used to tackle spatio-temporal pattern recognition tasks. In this paper we present a multi-neuronal spike pattern detection structure able to autonomously implement online learning and recognition of parallel spike sequences (i.e., sequences of pulses belonging to different neuronseural ensembles). The operating principle of this structure is based on two spiking/synaptic neurocomputational characteristics: spike latency, which enables neurons to fire spikes with a certain delay and heterosynaptic plasticity, which allows the own regulation of synaptic weights. From the perspective of the information representation, the structure allows mapping a spatio-temporal stimulus into a multi-dimensional, temporal, feature space. In this space, the parameter coordinate and the time at which a neuron fires represent one specific feature. In this sense, each feature can be considered to span a single temporal axis. We applied our proposed scheme to experimental data obtained from a motor-inhibitory cognitive task. The results show that out method exhibits similar performance compared with other classification methods, indicating the effectiveness of our approach. In addition, its simplicity and low computational cost suggest a large scale implementation for real time recognition applications in several areas, such as brain computer interface, personal biometrics authentication, or early detection of diseases.
机译:人类在包括模式识别在内的许多认知任务中表现出色。但是,这一过程的神经机制尚不十分清楚。尽管如此,受大脑回路启发的人工神经网络已被设计并用于解决时空模式识别任务。在本文中,我们提出了一种多神经元尖峰模式检测结构,该结构能够自主实现在线学习和识别平行尖峰序列(即属于不同神经元/神经集合的脉冲序列)。这种结构的工作原理基于两个尖峰/突触神经计算特征:尖峰潜伏期,使神经元能够以一定的延迟触发尖峰,以及异质突触可塑性,这可以自己调节突触权重。从信息表示的角度来看,该结构允许将时空刺激映射到多维的时间特征空间中。在这个空间中,参数坐标和神经元发射的时间代表一个特定特征。从这个意义上讲,每个特征都可以视为跨越单个时间轴。我们将提出的方案应用于从运动抑制性认知任务获得的实验数据。结果表明,与其他分类方法相比,out方法表现出相似的性能,表明了我们方法的有效性。此外,它的简单性和低计算量表明可在脑计算机接口,个人生物特征认证或疾病的早期检测等多个领域进行大规模的实时识别应用。

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