Detecting harmful carried objects plays a key role in intelligent surveillance systems and has widespread applications, for example, in airport security. In this paper, we focus on the relatively unexplored area of using low-cost 77GHz mmWave radar for the carried objects detection problem. The proposed system is capable of real-time detecting three classes of objects - laptop, phone, and knife - under open carry and concealed cases where objects are hidden with clothes or bags. This capability is achieved by the initial signal processing for localization and generating range-azimuth-elevation image cubes, followed by a deep learning-based prediction network and a multi-shot post-processing module for detecting objects. Extensive experiments for validating the system performance on detecting open carry and concealed objects have been presented with a self-built radar-camera testbed and collected dataset. Additionally, the influence of different input formats, factors, and parameters on system performance is analyzed, providing an intuitive understanding of the system. This system would be the very first baseline for other future works aiming to detect carried objects using 77GHz radar.
翻译:检测有害携带物体在智能监测系统中起着关键作用,并具有广泛的应用,例如在机场安全方面。在本文件中,我们侧重于相对未探索的领域,即使用成本低的77GHzmm Wave雷达来探测携带物体的问题;拟议的系统能够实时探测三类物体——膝上型、电话和刀子——在公开携带和隐藏的情况下,用衣服或袋隐藏物体。这种能力是通过初始信号处理来定位和生成射程振动图像立方体来实现的,随后是深度学习预测网络和探测物体的多发后处理模块。用自建的雷达摄像头测试和收集的数据集对系统探测开放携带物体和隐藏物体的系统性能进行了广泛的试验。此外,对不同输入格式、因素和参数对系统性能的影响进行了分析,对系统进行直观了解。该系统将成为未来其他工作的第一个基线,目的是利用77GHz雷达探测已携带物体。