Automated detection of smuggled high-risk security threats using Deep Learning

Nicolas Jaccard, T. W. Rogers, E. Morton, Lewis D. Griffin
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引用次数: 26

Abstract

The security infrastructure is ill-equipped to detect and deter the smuggling of non-explosive devices that enable terror attacks such as those recently perpetrated in western Europe. The detection of so-called "small metallic threats" (SMTs) in cargo containers currently relies on statistical risk analysis, intelligence reports, and visual inspection of X-ray images by security officers. The latter is very slow and unreliable due to the difficulty of the task: objects potentially spanning less than 50 pixels have to be detected in images containing more than 2 million pixels against very complex and cluttered backgrounds. In this contribution, we demonstrate for the first time the use of Convolutional Neural Networks (CNNs), a type of Deep Learning, to automate the detection of SMTs in fullsize X-ray images of cargo containers. Novel approaches for dataset augmentation allowed to train CNNs from-scratch despite the scarcity of data available. We report fewer than 6% false alarms when detecting 90% SMTs synthetically concealed in stream-of-commerce images, which corresponds to an improvement of over an order of magnitude over conventional approaches such as Bag-of-Words (BoWs). The proposed scheme offers potentially super-human performance for a fraction of the time it would take for a security officers to carry out visual inspection (processing time is approximately 3.5s per container image).
利用深度学习自动检测走私的高风险安全威胁
安全基础设施装备不足,无法探测和阻止非爆炸装置的走私,这些装置使恐怖袭击成为可能,比如最近在西欧发生的恐怖袭击。对货物集装箱中所谓的“小金属威胁”(smt)的探测目前依赖于统计风险分析、情报报告和保安人员对x射线图像的目视检查。由于任务的难度,后者非常缓慢和不可靠:在包含超过200万像素的图像中,必须在非常复杂和混乱的背景下检测到潜在跨越小于50像素的对象。在这篇贡献中,我们首次展示了使用卷积神经网络(cnn)(一种深度学习)来自动检测货物集装箱全尺寸x射线图像中的smt。新的数据集增强方法允许从头开始训练cnn,尽管可用数据稀缺。当检测到90%的smt合成隐藏在商业流图像中时,我们报告的误报不到6%,这相当于比传统方法(如Bag-of-Words (bow))提高了一个数量级以上。拟议的方案提供了潜在的超人性能,而只需保安人员进行目视检查所需时间的一小部分(每个容器图像的处理时间约为3.5秒)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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