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Application of Deep Learning on Millimeter-Wave Radar Signals: A Review

机译:深度学习在毫米波雷达信号的应用:综述

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摘要

The progress brought by the deep learning technology over the last decade has inspired many research domains, such as radar signal processing, speech and audio recognition, etc., to apply it to their respective problems. Most of the prominent deep learning models exploit data representations acquired with either Lidar or camera sensors, leaving automotive radars rarely used. This is despite the vital potential of radars in adverse weather conditions, as well as their ability to simultaneously measure an object’s range and radial velocity seamlessly. As radar signals have not been exploited very much so far, there is a lack of available benchmark data. However, recently, there has been a lot of interest in applying radar data as input to various deep learning algorithms, as more datasets are being provided. To this end, this paper presents a survey of various deep learning approaches processing radar signals to accomplish some significant tasks in an autonomous driving application, such as detection and classification. We have itemized the review based on different radar signal representations, as it is one of the critical aspects while using radar data with deep learning models. Furthermore, we give an extensive review of the recent deep learning-based multi-sensor fusion models exploiting radar signals and camera images for object detection tasks. We then provide a summary of the available datasets containing radar data. Finally, we discuss the gaps and important innovations in the reviewed papers and highlight some possible future research prospects.
机译:深度学习技术在过去十年中提出的进展激发了许多研究领域,例如雷达信号处理,语音和音频识别等,以将其应用于各自的问题。大多数突出的深度学习模型利用LIDAR或相机传感器获得的数据表示,留下了很少使用的汽车雷达。尽管雷达在恶劣天气条件下,这是雷达的重要潜力,以及它们可以无缝地同时测量物体范围和径向速度的能力。由于到目前为止,由于雷达信号没有被剥削,因此缺乏可用的基准数据。然而,最近,随着正在提供更多数据集,对各种深度学习算法应用于各种深度学习算法的输入存在很多兴趣。为此,本文提出了对各种深度学习的调查,处理雷达信号,以实现自主驾驶应用中的一些重要任务,例如检测和分类。我们根据不同的雷达信号表示逐项逐项列出,因为它是使用具有深度学习模型的雷达数据时的关键方面之一。此外,我们对最近基于深度学习的多传感器融合模型进行了广泛的审查,利用雷达信号和相机图像进行对象检测任务。然后,我们提供包含雷达数据的可用数据集的摘要。最后,我们讨论了审查的论文中的差距和重要创新,并突出了一些可能的未来研究前景。

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