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MMW Radar-Based Technologies in Autonomous Driving: A Review release_qk665dciafepfgkmnldgtknxtq

by Taohua Zhou, Mengmeng Yang, Kun Jiang, Henry Wong, Diange Yang

Published in Sensors by MDPI AG.

2020   Volume 20, Issue 24, p7283

Abstract

With the rapid development of automated vehicles (AVs), more and more demands are proposed towards environmental perception. Among the commonly used sensors, MMW radar plays an important role due to its low cost, adaptability In different weather, and motion detection capability. Radar can provide different data types to satisfy requirements for various levels of autonomous driving. The objective of this study is to present an overview of the state-of-the-art radar-based technologies applied In AVs. Although several published research papers focus on MMW Radars for intelligent vehicles, no general survey on deep learning applied In radar data for autonomous vehicles exists. Therefore, we try to provide related survey In this paper. First, we introduce models and representations from millimeter-wave (MMW) radar data. Secondly, we present radar-based applications used on AVs. For low-level automated driving, radar data have been widely used In advanced driving-assistance systems (ADAS). For high-level automated driving, radar data is used In object detection, object tracking, motion prediction, and self-localization. Finally, we discuss the remaining challenges and future development direction of related studies.
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Type  article-journal
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Date   2020-12-18
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DOI  10.3390/s20247283
PubMed  33353016
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