植入式神经记录的节能两阶段压缩感知方法

Yuanming Suo, J. Zhang, R. Etienne-Cummings, T. Tran, S. Chin
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引用次数: 10

摘要

在活体神经科学实验中,植入式神经记录装置已被广泛用于捕捉神经活动。由于采集速率高,这些设备需要高效的片上压缩方法来降低后续无线传输的功耗。近年来,压缩感知(CS)方法显示出巨大的潜力,但在感知电路的复杂性和压缩性能之间存在权衡。为了解决这一挑战,我们提出了一种两阶段的CS方法,包括使用随机伯努利矩阵S的片上传感和使用Puffer变换p的片外传感。我们的方法允许简单的电路设计,并提高了片外传感的重建性能。此外,我们提出使用测量数据作为稀疏字典d,它提供了与信号相关字典相当的重建性能,并且优于标准基。它还允许以较低的复杂性增量地更新D和P。在仿真和真实数据集上的实验表明,与其他CS方法相比,该方法的平均SNDR增益大于2 dB。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Energy-efficient two-stage Compressed Sensing method for implantable neural recordings
For in-vivo neuroscience experiments, implantable neural recording devices have been widely used to capture neural activity. With high acquisition rate, these devices require efficient on-chip compression methods to reduce power consumption for the subsequent wireless transmission. Recently, Compressed Sensing (CS) approaches have shown great potentials, but there exists the tradeoff between the complexity of the sensing circuit and its compression performance. To address this challenge, we proposed a two-stage CS method, including an on-chip sensing using random Bernoulli Matrix S and an off-chip sensing using Puffer transformation P. Our approach allows a simple circuit design and improves the reconstruction performance with the off-chip sensing. Moreover, we proposed to use measureed data as the sparsifying dictionary D. It delivers comparable reconstruction performance to the signal dependent dictionary and outperforms the standard basis. It also allows both D and P to be updated incrementally with reduced complexity. Experiments on simulation and real datasets show that the proposed approach can yield an average SNDR gain of more than 2 dB over other CS approaches.
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