Li Hao-Yang, Zhao Han-Ting, Wei Meng-Lin, Ruan Heng-Xin, Shuang Ya, Cui Tie Jun, Del Hougne Philipp, Li Lianlin
State Key Laboratory of Advanced Optical Communication Systems and Networks, Department of Electronics, Peking University, Beijing 100871, China.
State Key Laboratory of Millimeter Waves, Southeast University, Nanjing 210096, China.
Patterns (N Y). 2020 Apr 10;1(1):100006. doi: 10.1016/j.patter.2020.100006.
Electromagnetic (EM) sensing is a widespread contactless examination technique with applications in areas such as health care and the internet of things. Most conventional sensing systems lack intelligence, which not only results in expensive hardware and complicated computational algorithms but also poses important challenges for real-time sensing. To address this shortcoming, we propose the concept of intelligent sensing by designing a programmable metasurface for data-driven learnable data acquisition and integrating it into a data-driven learnable data-processing pipeline. Thereby, a measurement strategy can be learned jointly with a matching data post-processing scheme, optimally tailored to the specific sensing hardware, task, and scene, allowing us to perform high-quality imaging and high-accuracy recognition with a remarkably reduced number of measurements. We report the first experimental demonstration of "learned sensing" applied to microwave imaging and gesture recognition. Our results pave the way for learned EM sensing with low latency and computational burden.
电磁(EM)传感是一种广泛应用的非接触式检测技术,在医疗保健和物联网等领域都有应用。大多数传统传感系统缺乏智能,这不仅导致硬件成本高昂和计算算法复杂,还对实时传感构成了重大挑战。为了解决这一缺点,我们提出了智能传感的概念,通过设计一个可编程超表面来进行数据驱动的可学习数据采集,并将其集成到数据驱动的可学习数据处理管道中。由此,可以与匹配的数据后处理方案联合学习一种测量策略,该方案针对特定的传感硬件、任务和场景进行了优化定制,使我们能够以显著减少的测量次数执行高质量成像和高精度识别。我们报告了“学习传感”应用于微波成像和手势识别的首次实验演示。我们的结果为低延迟和低计算负担的学习型电磁传感铺平了道路。