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Learning-based near-optimal area-power trade-offs in hardware design for neural signal acquisition

机译:用于神经信号采集的硬件设计中基于学习的近似最佳面积功率折衷

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Wireless implantable devices capable of monitoring the electrical activity of the brain are becoming an important tool for understanding and potentially treating mental diseases such as epilepsy and depression. While such devices exist, it is still necessary to address several challenges to make them more practical in terms of area and power dissipation. In this work, we apply Learning Based Compressive Sub-sampling (LBCS) to tackle the power and area trade-offs in neural wireless devices. To this end, we propose a low-power and area-efficient system for neural signal acquisition which yields state-of-art compression rates up to 64× with high reconstruction quality, as demonstrated on two human iEEG datasets. This new fully digital architecture handles one neural acquisition channel, with an area of 210 × 210μm in 90nm CMOS technology, and a power dissipation of only 1μW.
机译:能够监视大脑电活动的无线植入设备正成为了解和潜在治疗诸如癫痫和抑郁症等精神疾病的重要工具。尽管存在此类设备,但仍然有必要解决一些挑战,以使它们在面积和功耗方面更加实用。在这项工作中,我们应用基于学习的压缩子采样(LBCS)来解决神经无线设备中的功率和面积折衷问题。为此,我们提出了一种用于神经信号采集的低功耗,高效区域系统,该系统可产生高达64倍的最新压缩率,并具有较高的重建质量,这在两个人类iEEG数据集上得到了证明。这种全新的全数字架构可处理一个神经采集通道,采用90nm CMOS技术的面积为210×210μm,功耗仅为1μW。

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