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Semantic Segmentation for Prohibited Items in Baggage Inspection

机译:行李检验中禁止物品的语义细分

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The X-ray screening system is crucial to protecting the safety of public spaces. However, automated detection in baggage inspection is still far from practical application. Most detection tasks rely mainly on humans. In this paper, the detection of prohibited items is regarded as a semantic segmentation task. Considering some characters of security imageries, we propose a segmentation net with novel dual attention, which could capture richer features for refining the segmentation results. Our model could not only automatically recognize the class of prohibited items but also locate prohibited items in baggage. It could facilitate the security staffs to carry out inspection. To validate the effectiveness of our proposed model, extensive experiments have been conducted on the real X-ray security imageries datasets. The experimental results show the net achieves super performance (mIoU of 0.683).
机译:X射线筛选系统对于保护公共空间的安全性至关重要。但是,行李检测中的自动检测仍然远非实际应用。大多数检测任务主要依赖于人类。在本文中,禁止物品的检测被认为是语义分段任务。考虑到某些安全成像仪的角色,我们提出了一个具有新型双重关注的分段网,可以捕获更丰富的功能来改进分段结果。我们的模型不仅可以自动识别禁止物品的班级,还可以在行李中找到禁止的物品。它可以促进安全人员进行检查。为了验证我们所提出的模型的有效性,已经在真正的X射线安全性成像数据集上进行了广泛的实验。实验结果表明,网络实现了超级性能(MIOU为0.683)。

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