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Learned Integrated Sensing Pipeline: Reconfigurable Metasurface Transceivers as Trainable Physical Layer in an Artificial Neural Network

机译:经验丰富的集成传感管道:可重新配置的超表面收发器作为人工神经网络中可训练的物理层

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摘要

The rapid proliferation of intelligent systems (e.g., fully autonomous vehicles) in today's society relies on sensors with low latency and computational effort. Yet current sensing systems ignore most available a priori knowledge, notably in the design of the hardware level, such that they fail to extract as much task‐relevant information per measurement as possible. Here, a “learned integrated sensing pipeline” (LISP), including in an end‐to‐end fashion both physical and processing layers, is shown to enable joint learning of optimal measurement strategies and a matching processing algorithm, making use of a priori knowledge on task, scene, and measurement constraints. Numerical results demonstrate accuracy improvements around 15% for object recognition tasks with limited numbers of measurements, using dynamic metasurface apertures capable of transceiving programmable microwave patterns. Moreover, it is concluded that the optimal learned microwave patterns are nonintuitive, underlining the importance of the LISP paradigm in current sensorization trends.
机译:在当今社会中,智能系统(例如,全自动驾驶汽车)的迅速普及依赖于低延迟和低计算量的传感器。然而,当前的传感系统忽略了大多数可用的先验知识,尤其是在硬件级别的设计中,因此它们无法为每次测量提取尽可能多的任务相关信息。在这里,展示了一个“学习的集成传感管道”(LISP),包括端到端的物理层和处理层,可以利用先验知识共同学习最佳的测量策略和匹配的处理算法。任务,场景和测量约束。数值结果表明,使用能够收发可编程微波模式的动态超表面孔径,在有限数量的测量中,对象识别任务的精度提高了约15%。此外,得出的结论是,最佳的学习微波模式是非直觉的,这突显了LISP范式在当前传感器化趋势中的重要性。

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