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Power-Efficient VLSI Implementation of A Feature Extraction Engine for Spike Sorting in Neural Recording and Signal Processing

机译:用于神经记录和信号处理中的尖峰分类的特征提取引擎的高效VLSI实现

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This paper presents a power-efficient VLSI implementation of a feature extraction engine for the applications of real-time spike sorting. Traditional method like principal components analysis (PCA) works in a batch mode by diagonalizing the covariance matrix constructed from the whole bunch of input data, which is computationally prohibitive and does not favor real-time processing. The proposed hardware framework does not require large volumes of memories by incrementally adjusting the number of estimated principal components in an automatic fashion. Low-voltage circuit design technique has been introduced to achieve significant power saving. The VLSI implementation of the system has a peak power dissipation of 8.59 μW with a 0.5 V supply voltage, and occupies an area of 0.268 mm~2.
机译:本文介绍了一个功能提取引擎的高效VLSI实现,用于实时尖峰分类的应用。 如主成分分析(PCA)等传统方法通过对角度地在批处理模式下在计算数据中对角度进行对抗模式,这是在计算上禁止的并且不赞成实时处理。 所提出的硬件框架通过以自动时尚逐步调整估计的主组件的数量,不需要大量的存储器。 引入低压电路设计技术以实现显着的省电。 该系统的VLSI实现具有8.59μW的峰值功耗,电源电压为0.5 V,占地0.268mm〜2的面积。

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