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Ultra-Low Power Dynamic Knob in Adaptive Compressed Sensing Towards Biosignal Dynamics

机译:面向生物信号动力学的自适应压缩传感中的超低功耗动态旋钮

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摘要

Compressed sensing (CS) is an emerging sampling paradigm in data acquisition. Its integrated analog-to-information structure can perform simultaneous data sensing and compression with low-complexity hardware. To date, most of the existing CS implementations have a fixed architectural setup, which lacks flexibility and adaptivity for efficient dynamic data sensing. In this paper, we propose a dynamic knob (DK) design to effectively reconfigure the CS architecture by recognizing the biosignals. Specifically, the dynamic knob design is a template-based structure that comprises a supervised learning module and a look-up table module. We model the DK performance in a closed analytic form and optimize the design via a dynamic programming formulation. We present the design on a 130 nm process, with a 0.058 mm fingerprint and a 187.88 nJ/event energy-consumption. Furthermore, we benchmark the design performance using a publicly available dataset. Given the energy constraint in wireless sensing, the adaptive CS architecture can consistently improve the signal reconstruction quality by more than 70%, compared with the traditional CS. The experimental results indicate that the ultra-low power dynamic knob can provide an effective adaptivity and improve the signal quality in compressed sensing towards biosignal dynamics.
机译:压缩感测(CS)是数据采集中一种新兴的采样范例。其集成的模拟到信息结构可以使用低复杂度的硬件同时执行数据感测和压缩。迄今为止,大多数现有的CS实现都具有固定的体系结构设置,该体系结构缺乏灵活性和适应性,无法进行有效的动态数据感测。在本文中,我们提出了一种动态旋钮(DK)设计,以通过识别生物信号来有效地重新配置CS架构。具体而言,动态旋钮设计是基于模板的结构,包括监督学习模块和查找表模块。我们以封闭的分析形式对DK性能进行建模,并通过动态编程公式优化设计。我们在130 nm工艺上展示该设计,具有0.058 mm指纹和187.88 nJ /事件能耗。此外,我们使用公开可用的数据集对设计性能进行基准测试。考虑到无线传感中的能量限制,与传统CS相比,自适应CS架构可以将信号重建质量持续提高70%以上。实验结果表明,超低功耗动态旋钮可以提供有效的适应性,并改善压缩感知中对生物信号动力学的信号质量。

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