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Transferring X-ray based automated threat detection between scanners with different energies and resolution

机译:在具有不同能量和分辨率的扫描仪之间传输基于X射线的自动威胁检测

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A significant obstacle to developing high performance Deep Learning algorithms for Automated Threat Detection (ATD) in security X-ray imagery, is the difficulty of obtaining large training datasets. In our previous work, we circumvented this problem for ATD in cargo containers, using Threat Image Projection and data augmentation. In this work, we investigate whether data scarcity for other modalities, such as parcels and baggage, can be ameliorated by transforming data from one domain so that it approximates the appearance of another. We present an ontology of ATD datasets to assess where transfer learning may be applied. We define frameworks for transfer at the training and testing stages, and compare the results for both methods against ATD where a common data source is used for training and testing. Our results show very poor transfer, which we attribute to the difficulty of accurately matching the blur and contrast characteristics of different scanners.
机译:在安全X射线图像中开发用于自动威胁检测(ATD)的高性能深度学习算法的主要障碍是难以获取大型训练数据集。在我们之前的工作中,我们使用威胁图像投影和数据增强技术规避了货柜中ATD的问题。在这项工作中,我们调查了是否可以通过转换一个域中的数据以使其近似于另一个域的外观来缓解其他方式(如包裹和行李)的数据短缺。我们提出了ATD数据集的本体,以评估在哪些地方可以应用转移学习。我们定义了在培训和测试阶段进行转移的框架,并将两种方法的结果与ATD进行比较,在ATD上,使用公共数据源进行培训和测试。我们的结果表明转印效果很差,这归因于难以准确匹配不同扫描仪的模糊和对比度特征。

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