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Automatic X-ray Image Segmentation and Clustering for Threat Detection

机译:自动X射线图像分割和聚类以进行威胁检测

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摘要

Firearms currently pose a known risk at the borders. The enormous number of X-ray images from parcels, luggage and freight coming into each country via rail, aviation and maritime presents a continual challenge to screening officers. To further improve UK capability and aid officers in their search for firearms we suggest an automated object segmentation and clustering architecture to focus officers' attentions to high-risk threat objects. Our proposal utilizes dual-view single/ dual-energy 2D X-ray imagery and is a blend of radiology, image processing and computer vision concepts. It consists of a triple-layered processing scheme that supports segmenting the luggage contents based on the effective atomic number of each object, which is then followed by a dual-layered clustering procedure. The latter comprises of mild and a hard clustering phase. The former is based on a number of morphological operations obtained from the image-processing domain and aims at disjoining mild-connected objects and to filter noise. The hard clustering phase exploits local feature matching techniques obtained from the computer vision domain, aiming at sub-clustering the clusters obtained from the mild clustering stage. Evaluation on highly challenging single and dual-energy X-ray imagery reveals the architecture's promising performance.
机译:目前,枪支在边界处构成已知危险。来自包裹,行李和货物的大量X射线图像通过铁路,航空和海上运输进入每个国家,这对检查人员构成了持续的挑战。为了进一步提高英国的能力并协助警官搜索枪支,我们建议使用自动对象分割和聚类架构,以使警官将注意力集中在高风险威胁对象上。我们的建议利用了双视图单/双能量2D X射线图像,并且融合了放射学,图像处理和计算机视觉概念。它由三层处理方案组成,该方案支持根据每个对象的有效原子序数对行李箱内的物品进行分割,然后再进行双层聚类过程。后者包括轻度和硬性聚集阶段。前者基于从图像处理领域获得的许多形态学运算,其目的是分离轻度连接的物体并过滤噪声。硬聚类阶段利用从计算机视觉域获得的局部特征匹配技术,旨在对从轻聚类阶段获得的聚类进行子聚类。对极富挑战性的单能和双能X射线图像进行的评估揭示了该架构令人鼓舞的性能。

著录项

  • 来源
    《Target and background signatures III》|2017年|104320O.1-104320O.9|共9页
  • 会议地点 Warsaw(PL)
  • 作者单位

    Signals and Autonomy group, Centre for Electronic Warfare Information and Cyber, Cranfield University, Defence Academy of the United Kingdom, Shrivenham SN6 8LA,UK;

    Signals and Autonomy group, Centre for Electronic Warfare Information and Cyber, Cranfield University, Defence Academy of the United Kingdom, Shrivenham SN6 8LA,UK;

    Signals and Autonomy group, Centre for Electronic Warfare Information and Cyber, Cranfield University, Defence Academy of the United Kingdom, Shrivenham SN6 8LA,UK;

    Signals and Autonomy group, Centre for Electronic Warfare Information and Cyber, Cranfield University, Defence Academy of the United Kingdom, Shrivenham SN6 8LA,UK;

  • 会议组织
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Object Clustering; Object Segmentation; Threat Detection; X-ray Images;

    机译:对象聚类;对象分割威胁检测; X射线图像;

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