DL-CFAR: A Novel CFAR Target Detection Method Based on Deep Learning

Chia-Hung Lin, Yu-Chien Lin, Yue Bai, W. Chung, Ta-Sung Lee, H. Huttunen
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引用次数: 17

Abstract

The well-known cell-averaging constant false alarm rate (CA-CFAR) scheme and its variants suffer from masking effect in multi-target scenarios. Although order-statistic CFAR (OS-CFAR) scheme performs well in such scenarios, it is compromised with high computational complexity. To handle masking effects with a lower computational cost, in this paper, we propose a deep-learning based CFAR (DL- CFAR) scheme. DL-CFAR is the first attempt to improve the noise estimation process in CFAR based on deep learning. Simulation results demonstrate that DL-CFAR outperforms conventional CFAR schemes in the presence of masking effects. Furthermore, it can outperform conventional CFAR schemes significantly under various signal-to-noise ratio conditions. We hope that this work will encourage other researchers to introduce advanced machine learning technique into the field of target detection.
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DL-CFAR:一种新的基于深度学习的CFAR目标检测方法
众所周知的细胞平均恒定虚警率(CA-CFAR)方案及其变体在多目标情况下存在掩蔽效应。虽然顺序统计CFAR (OS-CFAR)方案在这种情况下表现良好,但其计算复杂度较高。为了以更低的计算成本处理掩蔽效应,本文提出了一种基于深度学习的CFAR (DL- CFAR)方案。DL-CFAR是基于深度学习改进CFAR中噪声估计过程的第一次尝试。仿真结果表明,在存在掩蔽效应的情况下,DL-CFAR方案优于传统的CFAR方案。此外,在各种信噪比条件下,它都能显著优于传统的CFAR方案。我们希望这项工作将鼓励其他研究人员将先进的机器学习技术引入目标检测领域。
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