利用CNN x射线图像检测简易爆炸装置

IF 0.9 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS
Chakkaphat Chamnanphan, S. Vorapatratorn, Khwunta Kirimasthong, Tossapon Boongoen, Natthakan Iam-on
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引用次数: 0

摘要

——智慧城市及其相关服务的概念在创新发展和技术概念应用方面得到了广泛探索。促进智能生活的一个重要问题是个人生命和资产的安全,这些安全受到有组织犯罪和恐怖主义行为的威胁。防止在公共场所发生炸弹袭击,特别是侦测简易爆炸装置,受到相当多的关注。本研究的重点是开发一种分析模型,该模型可以准确地将行李或物体的x射线图像实例分类为是否含有简易爆炸装置。该模型为无法检测隐藏或隐藏设备的传统技术提供了另一种选择。对于这个特定的项目,由专家生成的样本图像涵盖了过去十年中在操作中遇到的一系列案例。然后使用这些图像开发深度学习模型,采用几种数据增强方法来克服训练样本数量有限的问题。与利用神经网络的相关工作相比,该模型对未见样本的准确率通常更高,最佳准确率为0.985。此外,还进行了实证研究,以确定具有良好预测性能的训练集的最优大小。研究表明,除了使用大量资源之外,大型训练集可能不会产生最佳结果,因为它可能表明过拟合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improvised Explosive Device Detection Using CNN With X-Ray Images
—The concept of a smart city and its associated services have been extensively explored in terms of innovation development and the application of technological concepts. One of the significant concerns in promoting smart living is the security of personal lives and assets, which are at risk from organized crime and acts of terrorism. A considerable amount of attention is paid to preventing bomb attacks in public places, especially the detection of an Improvised Explosive Device (IED). This research focuses on developing an analysis model that can accurately classify instances of x-ray images of baggage or objects as containing IEDs or not. The model provides an alternative to conventional techniques that fail to detect concealed or hidden devices. For this specific project, sample images are generated by experts to cover a range of cases encountered in operations during the past decade. These images are then used to develop a deep learning model, employing several data augmentation methods to overcome the issue of a limited number of training samples. As compared to a related work that exploits neural networks, the proposed model usually achieves higher accuracy rates for unseen samples, with the best accuracy rate being 0.985. Furthermore, an empirical study is conducted to determine the optimal size of the training set that exhibits good predictive performance. The study reveals that a large training set, apart from using a lot of resources, may not yield the best results as it may indicate overfitting.
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来源期刊
Journal of Advances in Information Technology
Journal of Advances in Information Technology Computer Science-Information Systems
CiteScore
4.20
自引率
20.00%
发文量
46
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