SuperRF:使用固定式低成本毫米波雷达增强3D射频表示。

Shiwei Fang, Shahriar Nirjon
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引用次数: 0

摘要

本文介绍了SuperRF-它从现成的低成本77GHz毫米波雷达中获取射频(RF)信号,并产生增强的场景3D RF表示。SuperRF在以下情况下非常有用:相机和其他类型的传感器不起作用,或由于隐私问题而不允许使用,或由于恶劣的照明条件和遮挡而影响其性能,或替代RF传感系统(如合成孔径雷达(SAR))太大,不方便且成本高昂。SuperRF的应用包括自主和半自主系统的导航和规划、人机交互和社交机器人,以及老年人和/或患者的家庭医疗监控场景。我们使用低成本的现成部件来捕获RF信号并训练SuperRF。SuperRF的新颖之处在于它使用了深度学习算法,然后是压缩的基于感知的迭代算法,该算法进一步增强了输出,从其稀疏的RF表示中生成RF场景的细粒度3D表示——如果不使用大尺寸的多个天线或在较长时间内物理移动天线,同类毫米波雷达无法实现这一点。我们通过深入的评估论证了该方法的可行性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SuperRF: Enhanced 3D RF Representation Using Stationary Low-Cost mmWave Radar.

This paper introduces SuperRF- which takes radio frequency (RF) signals from an off-the-shelf, low-cost, 77GHz mmWave radar and produces an enhanced 3D RF representation of a scene. SuperRF is useful in scenarios where camera and other types of sensors do not work, or not allowed due to privacy concerns, or their performance is impacted due to bad lighting conditions and occlusions, or an alternate RF sensing system like synthetic aperture radar (SAR) is too large, inconvenient, and costly. Applications of SuperRF includes navigation and planning of autonomous and semi-autonomous systems, human-robot interactions and social robotics, and elderly and/or patient monitoring in-home healthcare scenarios. We use low-cost, off-the-shelf parts to capture RF signals and to train SuperRF. The novelty of SuperRF lies in its use of deep learning algorithm, followed by a compressed sensing-based iterative algorithm that further enhances the output, to generate a fine-grained 3D representation of an RF scene from its sparse RF representation - which a mmWave radar of the same class cannot achieve without instrumenting the system with large sized multiple antennas or physically moving the antenna over a longer period in time. We demonstrate the feasibility and effectiveness through an in-depth evaluation.

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CiteScore
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