行李检查的对数x射线成像模型:模拟和目标检测

D. Mery, A. Katsaggelos
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引用次数: 27

摘要

在过去的几年里,许多计算机视觉算法已经开发出来用于x射线测试任务。其中一些用于行李检查,其目的是自动检测目标物体。然而,与需要的相比,自动行李检查方面的进展并不大,而且非常有限,因为x射线检查系统仍由人工检查人员操纵。在这项工作中,我们提出了一种x射线成像模型,可以在行李筛查中分离前景和背景。该模型可用于两个主要任务:i)模拟新的x射线图像,其中模拟图像可用于人类检查员的培训计划,或可用于增强计算机视觉算法的数据集。ii)(威胁)物体的检测,新算法可用于执行自动行李检查或在显示潜在威胁的检查任务中帮助用户。在我们的模型中,我们建议添加对数图像,而不是在x射线成像中通常使用的前景和背景的乘法。这允许使用线性策略将威胁对象的图像叠加到x射线图像上,并使用稀疏表示来分割目标对象。在我们的实验中,我们模拟了手枪、飞刀和剃须刀片的新x射线图像,其中无法区分模拟和真实的x射线图像。此外,我们在实验中表明,使用所提出的算法对飞刀、剃须刀片和手枪的有效检测优于其他一些最先进的技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Logarithmic X-Ray Imaging Model for Baggage Inspection: Simulation and Object Detection
In the last years, many computer vision algorithms have been developed for X-ray testing tasks. Some of them deal with baggage inspection, in which the aim is to detect automatically target objects. The progress in automated baggage inspection, however, is modest and very limited compared to what is needed because X-ray screening systems are still being manipulated by human inspectors. In this work, we present an X-ray imaging model that can separate foreground from background in baggage screening. The model can be used in two main tasks: i) Simulation of new X-ray images, where simulated images can be used in training programs for human inspectors, or can be used to enhance datasets for computer vision algorithms. ii) Detection of (threat) objects, where new algorithms can be employed to perform automated baggage inspection or to aid an user in the inspection task showing potential threats. In our model, rather than a multiplication of foreground and background, that is typically used in X-ray imaging, we propose the addition of logarithmic images. This allows the use of linear strategies to superimpose images of threat objects onto X-ray images and the use of sparse representations in order to segment target objects. In our experiments, we simulate new X-ray images of handguns, shuriken and razor blades, in which it is impossible to distinguish simulated and real X-ray images. In addition, we show in our experiments the effective detection of shuriken, razor blades and handguns using the proposed algorithm outperforming some alternative state-of- the-art techniques.
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