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Model-based probabilistic relaxation segmentation applied to threat detection in airport X-ray imagery

机译:基于模型的概率松弛分割在机场X射线图像威胁检测中的应用

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This paper presents a new model-based probabilistic relaxation technique for segmentation. Model-based probabilistic relaxation labeling (PRL) uses high-level model characteristics to segment out objects in an image. Airport security involves X-ray imaging to examine the contents of the carry-on baggage. Traditionally, security officers must inspect large amounts of data, and in most cases discover no threat objects. As a result, they become less attentive and easily distracted, allowing for the possibility that threat objects may be overlooked. This type of situation is well suited for a computer vision system, which never tires, operates at a consistent level and could establish a minimum expected level of threat detection. Any computer vision problem can be divided into three stages: segmentation, feature extraction and feature evaluation. This paper presents a new method of segmentation. The segmentation phase of computer vision can be viewed as an input stage in which candidate regions of the image are identified, and if they meet basic conditions are processed by the remaining stages of the vision system.
机译:本文提出了一种新的基于模型的概率松弛技术进行分割。基于模型的概率松弛标记(PRL)使用高级模型特征来分割图像中的对象。机场安全涉及X射线成像以检查随身行李的内容。传统上,安全人员必须检查大量数据,并且在大多数情况下不会发现威胁对象。结果,它们变得不那么专心且易于分散注意力,从而有可能忽略威胁对象。这种情况非常适合计算机视觉系统,该系统永不疲倦,以一致的水平运行,并且可以建立最低的预期威胁检测水平。任何计算机视觉问题都可以分为三个阶段:分割,特征提取和特征评估。本文提出了一种新的分割方法。可以将计算机视觉的分割阶段视为输入阶段,在此阶段中,将识别图像的候选区域,如果它们满足基本条件,则由视觉系统的其余阶段进行处理。

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