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Evaluation of a Dual Convolutional Neural Network Architecture for Object-wise Anomaly Detection in Cluttered X-ray Security Imagery

机译:杂波X射线安全图像中面向对象异常检测的双卷积神经网络体系结构的评估

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X-ray baggage security screening is widely used to maintain aviation and transport secure. Of particular interest is the focus on automated security X-ray analysis for particular classes of object such as electronics, electrical items and liquids. However, manual inspection of such items is challenging when dealing with potentially anomalous items. Here we present a dual convolutional neural network (CNN) architecture for automatic anomaly detection within complex security X-ray imagery. We leverage recent advances in region-based (R-CNN), mask-based CNN (Mask R-CNN) and detection architectures such as RetinaNet to provide object localisation variants for specific object classes of interest. Subsequently, leveraging a range of established CNN object and fine-grained category classification approaches we formulate within object anomaly detection as a two-class problem (anomalous or benign). Whilst the best performing object localisation method is able to perform with 97.9% mean average precision (mAP) over a six-class X-ray object detection problem, subsequent two-class anomaly/benign classification is able to achieve 66% performance for within object anomaly detection. Overall, this performance illustrates both the challenge and promise of object-wise anomaly detection within the context of cluttered X-ray security imagery.
机译:X射线行李安全检查被广泛用于维持航空和运输安全。特别关注的是针对特定类别的物体(如电子,电气物品和液体)的自动安全X射线分析。但是,在处理潜在异常物品时,对此类物品进行手动检查具有挑战性。在这里,我们提出了用于复杂安全X射线图像内自动异常检测的双卷积神经网络(CNN)体系结构。我们利用基于区域的(R-CNN),基于蒙版的CNN(Mask R-CNN)和诸如RetinaNet的检测架构的最新进展,为感兴趣的特定对象类别提供对象定位变体。随后,利用一系列已建立的CNN对象和细粒度类别分类方法,我们在对象异常检测中将其公式化为两类问题(异常或良性)。尽管在六类X射线对象检测问题上性能最佳的对象定位方法能够以97.9%的平均平均精度(mAP)进行工作,但随后的两类异常/良性分类对于对象内的性能却可以达到66%异常检测。总体而言,这种性能既说明了在混乱的X射线安全图像环境中进行面向对象的异常检测所面临的挑战和希望。

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