基于三维雷达图像的隐形武器实时探测技术

Nagma S. Khan, Kazumine Ogura, E. Cosatto, Masayuki Ariyoshi
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引用次数: 2

摘要

本文提出了一种基于三维雷达图像的实时隐蔽武器探测框架,该框架适用于穿越筛选系统。巡查系统的目的是透过对行走的人士进行持续巡查,以确保在人员密集地区的安全,因此需要一种准确和实时的侦测方法。为了保证精度,无论武器的三维方向如何,都需要被探测到,因此我们使用三维雷达图像作为探测输入。为了实现实时性,我们重新制定了经典的基于U-Net的分割网络来执行3D检测任务。我们的3D分割网络预测峰形概率图,而不是体素掩码,通过预测图上的基本峰检测操作来实现位置推断。在峰形概率图中,峰标记武器的位置。因此,武器探测任务转化为概率图上的峰值探测。采用高斯函数在概率图中对武器进行建模。我们通过实验验证了我们的方法在真实的三维雷达图像上获得的武器筛选系统原型。广泛的消融研究证实了我们提出的方法优于现有的传统方法的有效性。实验结果表明,该方法可以实现精确、实时的连续随钻,适合于实际应用。
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Real-time Concealed Weapon Detection on 3D Radar Images for Walk-through Screening System
This paper presents a framework for real-time concealed weapon detection (CWD) on 3D radar images for walk-through screening systems. The walk-through screening system aims to ensure security in crowded areas by performing CWD on walking persons, hence it requires an accurate and real-time detection approach. To ensure accuracy, a weapon needs to be detected irrespective of its 3D orientation, thus we use the 3D radar images as detection input. For achieving real-time, we reformulate classic U-Net based segmentation networks to perform 3D detection tasks. Our 3D segmentation network predicts peak-shaped probability map, instead of voxel-wise masks, to enable position inference by elementary peak detection operation on the predicted map. In the peak-shaped probability map, the peak marks the weapon’s position. So, weapon detection task translates to peak detection on the probability map. A Gaussian function is used to model weapons in the probability map. We experimentally validate our approach on realistic 3D radar images obtained from a walk-through weapon screening system prototype. Extensive ablation studies verify the effectiveness of our proposed approach over existing conventional approaches. The experimental results demonstrate that our proposed approach can perform accurate and real-time CWD, thus making it suitable for practical applications of walk-through screening.
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