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Density-based hardware-oriented classification for spike sorting microsystems

机译:基于密度的面向硬件的尖峰分类微系统分类

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Successful proof-of-concept laboratory experiments on cortically-controlled brain computer interface motivate continued development for neural prosthetic microsystems (NPMs). One of the research directions is to realize realtime spike sorting processors (SSPs) on the NPM. The SSP detects the spikes, extracts the features, and then performs the classification algorithm in realtime in order to differentiate the spikes for the different firing neurons. Several architectures have been designed for the spike detection and feature extraction. However, the classification hardware is missing. To complete the SSP, a density-based hardware-oriented classification algorithm is proposed for hardware implementation. The traditional classification algorithms require a considerable memory space to store all the training features during the processing iteration, which results in a considerable power and area for the hardware. The proposed one is designed based on the density map of the spike features. The density map can be accumulated on-line with the coming of the spike features. Therefore the algorithm can save significant memory space, and is good for efficient hardware implementation.
机译:在皮质控制的大脑计算机界面上成功进行的概念验证实验室实验,促使神经修复微系统(NPM)的持续发展。研究方向之一是在NPM上实现实时峰值分类处理器(SSP)。 SSP检测尖峰,提取特征,然后实时执行分类算法,以区分不同激发神经元的尖峰。已经针对尖峰检测和特征提取设计了几种架构。但是,缺少分类硬件。为了完成SSP,提出了一种基于密度的面向硬件的分类算法,用于硬件实现。传统的分类算法需要大量的存储空间来存储处理迭代过程中的所有训练特征,这会为硬件带来相当大的功耗和面积。根据尖峰特征的密度图设计提出的一种。密度图可以随着尖峰特征的出现而在线累积。因此,该算法可以节省大量的存储空间,有利于高效的硬件实现。

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