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A Deep Learning Method for Detection of Dangerous Equipment

机译:检测危险设备的深度学习方法

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Effective detection of concealed dangerous equipment is a critical need to protect people' security in crowd public situations. Terahertz (THz) technology is ideally suited for such an application since it is able to see through clothing and packages, and, in addition, THz photons have lower energy than infrared and do not show the ionizing properties of X-ray radiation. There are two key technologies involved in this application: one is to develop THz imaging hardware and the other is to develop corresponding machine vision algorithms. In this paper we address to the latter and develop a deep learning-based method for detection and recognition of the dangerous equipment in THz images. The detection method is implemented with a two-stage classifier, in which the first-stage classifier is for detecting the direct visible dangerous equipment in natural light images, and the second-stage classifier is for detecting the concealed dangerous objects in THz images. In the detection system, when an input image is classified as a natural image, it is directly processed to give final classification result by the first-stage classifier. While the input image is classified as a THz image, it is sent to the second-stage classifier for finer processing and classification. Preliminary experiments conducted in the work show that the proposed method can give satisfactory performance in detection/recognition of dangerous equipment both in nature and THz images.
机译:有效地检测隐藏的危险设备是保护人群公共场合中人民安全的危急。 Terahertz(Thz)技术非常适合这样的应用,因为它能够通过衣物和包装看到,并且另外,THz光子的能量低于红外线,并且不显示X射线辐射的电离性能。本申请中有两种关键技术:一个是开发THz成像硬件,另一个是开发相应的机器视觉算法。在本文中,我们解决了后者并开发了一种深入的学习方法,用于检测和识别THz图像中的危险设备。检测方法用两级分类器实现,其中第一级分类器用于检测自然光图像中的直接可见危险设备,并且第二级分类器用于检测THz图像中的隐藏危险物体。在检测系统中,当输入图像被归类为自然图像时,直接处理以给出第一阶段分类器的最终分类结果。虽然输入图像被分类为THz图像,但它被发送到第二阶段分类器以进行更精细的处理和分类。在工作中进行的初步实验表明,该方法可以在性质和THz图像中检测/识别危险设备的检测/识别方面提供令人满意的性能。

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