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Prohibited Item Detection in Airport X-Ray Security Images via Attention Mechanism Based CNN

机译:通过基于CNN的注意机制在机场X射线安全图像中禁止物品检测

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Automation of security inspections is crucial for improving the efficiency and reducing security risks. In this paper, we focus on automatically recognizing and localizing prohibited items in airport X-ray security images. A top-down attention mechanism is applied to enhance a CNN classifier to additionally locate the prohibited items. We introduce a high-level semantic feedback loop to map the targets semantic signal to the input X-ray image space for generating task-specic attention maps. And the attention maps indicate the location and general outline of prohibited items in the input images. Furthermore, to obtain more accurate location information, we combine the lateral inhibition and contrastive attention to suppress noise and non-target interference in attention maps. The experiments on the GDX-ray image dataset have demonstrated the efficiency and stability of the proposed scheme in both single target detection and multi-target detection.
机译:安全检查的自动化对于提高效率和降低安全风险至关重要。在本文中,我们专注于自动识别和定位机场X射线安全图像中的违禁物品。应用了自上而下的注意机制来增强CNN分类器,以进一步定位违禁物品。我们引入了高级语义反馈循环,以将目标语义信号映射到输入的X射线图像空间,以生成特定于任务的注意力图。注意图指示输入图像中禁止物品的位置和大致轮廓。此外,为了获得更准确的位置信息,我们将横向抑制和对比注意相结合以抑制注意图中的噪声和非目标干扰。 GDX射线图像数据集上的实验证明了该方案在单目标检测和多目标检测中的有效性和稳定性。

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