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Stream-based Hebbian eigenfilter for real-time neuronal spike discrimination

机译:基于流的Hebbian特征滤波器用于实时神经元尖峰识别

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摘要

BackgroundPrincipal component analysis (PCA) has been widely employed for automatic neuronal spike sorting. Calculating principal components (PCs) is computationally expensive, and requires complex numerical operations and large memory resources. Substantial hardware resources are therefore needed for hardware implementations of PCA. General Hebbian algorithm (GHA) has been proposed for calculating PCs of neuronal spikes in our previous work, which eliminates the needs of computationally expensive covariance analysis and eigenvalue decomposition in conventional PCA algorithms. However, large memory resources are still inherently required for storing a large volume of aligned spikes for training PCs. The large size memory will consume large hardware resources and contribute significant power dissipation, which make GHA difficult to be implemented in portable or implantable multi-channel recording micro-systems.
机译:背景技术主成分分析(PCA)已广泛用于自动神经元尖峰分选。计算主成分(PC)的计算量很大,并且需要复杂的数值运算和大量的内存资源。因此,PCA的硬件实现需要大量的硬件资源。在我们以前的工作中,已经提出了通用Hebbian算法(GHA)用于计算神经元突波的PC,从而消除了传统PCA算法中计算量大的协方差分析和特征值分解的需求。然而,仍然固有地需要大的存储器资源来存储用于训练PC的大量对准的尖峰。大容量的存储器将消耗大量的硬件资源并造成巨大的功耗,这使得GHA难以在便携式或可植入的多通道记录微系统中实现。

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