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Optimization of nonlinear energy operator based spike detection circuit for high density neural recordings

机译:基于非线性能量运算符的高密度神经录音尖峰检测电路的优化

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Future brain machine interface systems will require recording thousands of neural channels, making it important to minimize the power and area of neural interface integrated circuits. Spike detection is an essential step for neural signal processing. This paper describes the design of a spike detection circuit based on the nonlinear energy operator (NEO) algorithm that is optimized for power and area. Through statistical analysis of NEO coefficients, the number of computations is minimized and the number of registers is shown to be as low as one per channel without degenerating spike detection performance. Based on an analysis of the power-area tradeoff, an optimal 16-channel interleaved architecture is presented and shown to achieve a factor of 4 improvement in power-area product compared to reported NEO implementations.
机译:未来的脑机接口系统将需要录制数千个神经通道,从而最大限度地减少神经接口集成电路的功率和面积。尖峰检测是神经信号处理的重要步骤。本文介绍了基于非线性能量运算符(NEO)算法的尖峰检测电路的设计,该算法针对电力和区域进行了优化。通过Neo系数的统计分析,最小化计算的数量,并且寄存器的数量被示出为每通道的一个低于一个,而无需退化尖峰检测性能。基于对电力区概论的分析,提出了一种最佳的16通道交错架构,并示出了与报告的NEO实现相比,在电力区域产品中实现了4个改善。

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