一种用于双x射线行李图像中物体检测的基于颜色的机器学习分割方法

Mohamed Chouai, M. Merah, J. Sancho-Gómez, M. Mimi
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引用次数: 3

摘要

每年,世界各地机场的x光系统都会检查数十亿件行李箱和其他物品。这一过程非常重要,因为它涉及探测可能的危险物体,如武器或爆炸物。然而,机场监视人员所做的工作也不是没有错误的,通常是由于疲劳或分心。这是一个安全问题,总是可以在自动智能工具的帮助下减少。本文提出了一种用于图像分割的机器学习应用。首先,使用基于颜色的图像像素分割,将有机、无机、混合和不透明物体从背景中分离出来。其次,这五种类型的图像在所谓的融合阶段被简化,并分为两种:有机和无机。在x射线图像的大数据集上,对几种具有启发式算法的ML算法进行了比较研究,为未来的危险物体检测工作提供了有机和无机物体的分类。
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A machine learning color-based segmentation for object detection within dual X-ray baggage images
Billions of suitcases and other belongings are checked every year in the X-ray systems of airports around the world. This process is of great importance because it involves the detection of possible dangerous objects such as weapons or explosives. However, the work done by airport surveillance personnel is not free from errors usually due to tiredness or distractions. This is a security problem that can always be reduced with the help of automatic intelligent tools. This paper proposes a machine learning (ML) application for image segmentation. First, it is used a color-based pixel segmentation of images to separate organic, inorganic, mixed and opaque objects from the background. Second, those five types of images are reduced in the so-called fusion phase and classified into only two: organic and inorganic. A comparative study of several ML algorithms with heuristics over a large data set of X-ray images is presented for the classification of organic and inorganic objects for a future dangerous object detection work.
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