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首页> 外文期刊>International Journal of Neural Systems >An Attention-Based Spiking Neural Network for Unsupervised Spike-Sorting
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An Attention-Based Spiking Neural Network for Unsupervised Spike-Sorting

机译:用于无人监督尖峰排序的基于关注的神经网络

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摘要

Bio-inspired computing using artificial spiking neural networks promises performances outperforming currently available computational approaches. Yet, the number of applications of such networks remains limited due to the absence of generic training procedures for complex pattern recognition, which require the design of dedicated architectures for each situation. We developed a spike-timing-dependent plasticity (STDP) spiking neural network (SSN) to address spike-sorting, a central pattern recognition problem in neuroscience. This network is designed to process an extracellular neural signal in an online and unsupervised fashion. The signal stream is continuously fed to the network and processed through several layers to output spike trains matching the truth after a short learning period requiring only few data. The network features an attention mechanism to handle the scarcity of action potential occurrences in the signal, and a threshold adaptation mechanism to handle patterns with different sizes. This method outperforms two existing spike-sorting algorithms at low signal-to-noise ratio (SNR) and can be adapted to process several channels simultaneously in the case of tetrode recordings. Such attention-based STDP network applied to spike-sorting opens perspectives to embed neuromorphic processing of neural data in future brain implants.
机译:使用人工尖峰神经网络的生物启发计算承诺表演优先表现出目前可用的计算方法。然而,由于没有用于复杂模式识别的通用培训​​程序,因此这些网络的应用程序的数量仍然有限,这需要为每种情况设计专用架构。我们开发了一种尖峰时序依赖的可塑性(STDP)尖峰神经网络(SSN),以解决神经科学中的尖峰分类,是一个中央模式识别问题。该网络旨在以在线和无监督的方式处理细胞外神经信号。信号流被连续馈送到网络,并通过几层处理,以在需要少数数据的短学习期后输出匹配真理的尖峰列车。网络具有注意机制,以处理信号中的动作电位出现的稀缺机制,以及阈值适应机构,以处理具有不同尺寸的图案。该方法以低信噪比(SNR)以低信噪比(SNR)优于两个现有的峰值分选算法,并且可以适于在四极录记录的情况下同时处理多个通道。这种基于关注的STDP网络适用于尖峰分类,打开透视,以在未来的脑植入物中嵌入神经数据的神经形态处理。

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