A nonlinear signal-specific ADC for efficient neural recording

Mohsen Judy, A. M. Sodagar, R. Lotfi
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引用次数: 4

Abstract

A bandwidth-efficient technique for nonlinearly converting analog neural signals into digital is presented to be used in implantable neural recording microsystems. It is shown that the choice of a proper nonlinear quantization function helps reduce the outgoing bit rate carrying the recorded neural data. Another major benefit of digitizing neural signals using a proper nonlinear analog-to-digital converter (ADC) is the improvement in the signal-to-noise ratio (SNR) of the signal. The 8-b nonlinear anti-logarithmic ADC reported in this paper digitizes large action potentials with 10b resolution, while quantizing the small background noise with a resolution of as low as 3b. The circuit was designed and simulated in a 0.18-um CMOS process. According to the experimental results, SNR of the neural signal increases from 5.11 before digitization to 22 after being digitized using the proposed ADC approach.
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用于高效神经记录的非线性信号专用ADC
提出了一种将模拟神经信号非线性转换为数字信号的带宽高效技术,用于植入式神经记录微系统。结果表明,选择适当的非线性量化函数有助于降低携带记录神经数据的输出比特率。使用适当的非线性模数转换器(ADC)对神经信号进行数字化的另一个主要好处是提高信号的信噪比(SNR)。本文报道的8-b非线性抗对数ADC以10b的分辨率对大动作电位进行数字化,同时以低至3b的分辨率对小背景噪声进行量化。在0.18 um CMOS工艺下设计并仿真了该电路。实验结果表明,采用该方法后,神经信号的信噪比由数字化前的5.11提高到数字化后的22。
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