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A New GAN-Based Anomaly Detection (GBAD) Approach for Multi-Threat Object Classification on Large-Scale X-Ray Security Images

机译:大规模X射线安全图像的多威胁对象分类的新GAN基因vATOMY检测(GBAD)方法

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Threat object recognition in x-ray security images is one of the important practical applications of computer vision. However, research in this field has been limited by the lack of available dataset that would mirror the practical setting for such applications. In this paper, we present a novel GAN-based anomaly detection (GBAD) approach as a solution to the extreme class-imbalance problem in multi-label classification. This method helps in suppressing the surge in false positives induced by training a CNN on a non-practical dataset. We evaluate our method on a large-scale x-ray image database to closely emulate practical scenarios in port security inspection systems. Experiments demonstrate improvement against the existing algorithm.
机译:X射线安全图像中的威胁对象识别是计算机视觉的重要实际应用之一。但是,该领域的研究受到缺乏可用的数据集,这些数据集将镜像此类应用程序的实际设置。在本文中,我们提出了一种新的GaN基异常检测(GBAD)方法作为多标签分类中的极端类别不平衡问题的解决方案。该方法有助于抑制在非实际数据集上训练CNN引起的误报引起的浪涌。我们在大型X射线图像数据库上评估我们的方法,以密切模拟端口安全检查系统中的实际情况。实验表明对现有算法的改进。

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