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Toward Human-in-the-Loop Prohibited Item Detection in X-ray Baggage Images

机译:面向X射线行李图像中的在环中禁止物品检测

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X-ray baggage security screening is a demanding task for aviation and rail transit security; automatic prohibited item detection in X-ray baggage images can help reduce the work of inspectors. However, as many items are placed too close to each other in the baggages, it is difficult to fully trust the detection results of intelligent prohibited item detection algorithms. In this paper, a human-in-the-loop baggage inspection framework is proposed. The proposed framework utilizes the deep-learning-based algorithm for prohibited item detection to find suspicious items in X-ray baggage images, and select manual examination when the detection algorithm cannot determine whether the baggage is dangerous or safe. The advantages of proposed inspection process include: online to capture new sample images for training incrementally prohibited item detection model, and augmented prohibited item detection intelligence with human-computer collaboration. The preliminary experimental results show, human-in-the-loop process by combining cognitive capabilities of human inspector with the intelligent algorithms capabilities, can greatly improve the efficiency of in-baggage security screening.
机译:X射线行李安检是航空和铁路运输安全的一项艰巨任务。 X射线行李图像中的自动禁止物品检测可以帮助减少检查员的工作。但是,由于许多物品在行李中放置得太近,因此很难完全信任智能违禁物品检测算法的检测结果。本文提出了一种人在回路中的行李检查框架。提出的框架利用基于深度学习的算法对违禁物品进行检测,以在X射线行李图像中查找可疑物品,并在检测算法无法确定行李是否危险或安全时选择人工检查。提议的检查过程的优点包括:在线捕获新的样本图像以训练增量违禁物品检测模型,以及通过人机协作增强违禁物品检测智能。初步的实验结果表明,通过将人类检查员的认知能力与智能算法能力相结合,在环过程可以大大提高行李内安检的效率。

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