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Threat Image Projection (TIP) into X-ray images of cargo containers for training humans and machines

机译:威胁图像投影(提示)进入货物容器的X射线图像,用于培训人类和机器

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We propose a framework for Threat Image Projection (TIP) in cargo transmission X-ray imagery. The method exploits the approximately multiplicative nature of X-ray imagery to extract a library of threat items. These items can then be projected into real cargo. We show using experimental data that there is no significant qualitative or quantitative difference between real threat images and TIP images. We also describe methods for adding realistic variation to TIP images in order to robustify Machine Learning (ML) based algorithms trained on TIP. These variations are derived from cargo X-ray image formation, and include: (i) translations; (ii) magnification; (iii) rotations; (iv) noise; (v) illumination; (vi) volume and density; and (vii) obscuration. These methods are particularly relevant for representation learning, since it allows the system to learn features that are invariant to these variations. The framework also allows efficient addition of new or emerging threats to a detection system, which is important if time is critical. We have applied the framework to training ML-based cargo algorithms for (i) detection of loads (empty verification), (ii) detection of concealed cars (ii) detection of Small Metallic Threats (SMTs). TIP also enables algorithm testing under controlled conditions, allowing one to gain a deeper understanding of performance. Whilst we have focused on robustifying ML-based threat detectors, our TIP method can also be used to train and robustify human threat detectors as is done in cabin baggage screening.
机译:我们提出了一种用于货物传输X射线图像中的威胁图像投影(尖端)的框架。该方法利用X射线图像的大致乘法性质来提取威胁项目库。然后可以将这些物品预计将进入真正的货物。我们展示使用实验数据,即真正的威胁图像和尖端图像之间没有显着的定性或定量差异。我们还描述了为提示图像添加逼真变化的方法,以便在尖端培训的基于机器学习(ML)基于机器学习(ML)的算法。这些变化来自货物X射线图像形成,包括:(i)翻译; (ii)放大倍数; (iii)旋转; (iv)噪音; (v)照明; (vi)体积和密度; (vii)遮挡。这些方法与表示学习特别相关,因为它允许系统学习不变的特征,这些功能对这些变化不变。该框架还允许有效地向检测系统提供新的或新兴威胁,如果时间至关重要,这很重要。我们已将框架应用于培训基于ML的货物算法(i)检测负载(空验证),(ii)检测的隐藏式汽车(II)检测小金属威胁(SMT)。提示还可以在受控条件下启用算法测试,允许一个人深入了解性能。虽然我们专注于强制性的ML的威胁探测器,但我们的尖端方法也可用于培训和强化人类威胁探测器,就像在机舱行李筛查中所做的那样。

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