论文标题
低海拔混乱背景中基于深度学习的无人机检测
Deep learning-based UAV detection in the low altitude clutter background
论文作者
论文摘要
无人机(UAV)由于其低成本和多功能性而被广泛使用,但它们也构成了安全性和隐私威胁。因此,低空无人机的可靠检测是一个重要的问题。强大的地面混乱使雷达在噪音中淹没的小无人机的雷达回响,从而导致雷达检测可靠性低。提出了一种基于深层对比学习的低空无人机检测方法来解决上述问题:具体地说,首先建立了低空杂波干扰下的低空无人机雷达回声模型。基于回声组件和无人机多普勒域可识别的机制,使用ZAM变换和形态操作的时频转换方法来抑制混乱中的歧义问题。然后,利用引入对比度学习的特征提取和融合方法来抑制非目标地面混乱干扰。最后,依靠语义特征的检测器设计用于对低空无人机的可靠识别。对实际数据和模拟数据进行的实验证实,所提出的方法可以有效地抑制地面混乱,并可靠地提取无人机的可识别语义特征。与最近的最新解决方案相比,所提出的方法可实现较低的虚假和缺失警报,并将检测准确性提高了5%以上,而相同的信号噪声比率有效地提高了检测可靠性。
Unmanned aerial vehicles (UAVs) are widely used due to their low cost and versatility, but they also pose security and privacy threats. Therefore, reliable detection for low-altitude UAVs is an important issue. The strong ground clutter makes the radar echoes from small UAVs submerged in noise, resulting in low radar detection reliability. A low-altitude UAV detection method based on deep contrastive learning is proposed to address the above problems: Concretely, a low-altitude UAV radar echo model under low-altitude clutter interference is first established. Based on the echo components and the UAV Doppler domain identifiable mechanism, a time-frequency transformation method combining ZAM transform and morphological operations is used to suppress the ambiguity problem under clutter. Then feature extraction and fusion method introducing contrast learning is utilized to suppress non-target ground clutter interference. Finally, a detector relying on semantic features is designed for the reliable identification of low-altitude UAVs. The experiments carried out on both real and simulated data confirm that the proposed method can effectively suppress ground clutter and reliably extract recognizable semantic features of UAVs. The proposed method achieves lower false and missing alarms compared with recent state-of-art solutions and improves the detection accuracy by more than 5% for the same signal-to-noise ratio, which effectively improves the detection reliability.