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Deep Radar Waveform Design for Efficient Automotive Radar Sensing

机译:用于高效汽车雷达感应的深雷达波形设计

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In radar systems, unimodular (or constant-modulus) waveform design plays an important role in achieving better clutter/interference rejection, as well as a more accurate estimation of the target parameters. The design of such sequences has been studied widely in the last few decades, with most design algorithms requiring sophisticated a priori knowledge of environmental parameters which may be difficult to obtain in real-time scenarios. In this paper, we propose a novel hybrid model-driven and data-driven architecture that adapts to the ever changing environment and allows for adaptive unimodular waveform design. In particular, the approach lays the groundwork for developing extremely low-cost waveform design and processing frameworks for radar systems deployed in autonomous vehicles. The proposed model-based deep architecture imitates a wellknown unimodular signal design algorithm in its structure, and can quickly infer statistical information from the environment using the observed data. Our numerical experiments portray the advantages of using the proposed method for efficient radar waveform design in time-varying environments.
机译:在雷达系统中,单模(或恒定模)波形设计在实现更好的杂波/干扰抑制以及更准确地估计目标参数方面起着重要作用。在过去的几十年中,对此类序列的设计进行了广泛的研究,大多数设计算法都要求对环境参数具有先验知识,而这在实时情况下可能很难获得。在本文中,我们提出了一种新颖的混合模型驱动和数据驱动的体系结构,该体系结构适应不断变化的环境并允许自适应单模波形设计。尤其是,该方法为开发用于自动驾驶汽车中的雷达系统的极低成本波形设计和处理框架奠定了基础。所提出的基于模型的深度架构在结构上模仿了一种众所周知的单模块信号设计算法,并且可以使用观察到的数据从环境中快速推断出统计信息。我们的数值实验显示了在时变环境中使用所提出的方法进行高效雷达波形设计的优势。

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