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Multi-view X-Ray R-CNN

机译:多视图X射线R-CNN

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摘要

Motivated by the detection of prohibited objects in carry-on luggage as a part of avionic security screening, we develop a CNN-based object detection approach for multi-view X-ray image data. Our contributions are two-fold. First, we introduce a novel multi-view pooling layer to perform a 3D aggregation of 2D CNN-features extracted from each view. To that end, our pooling layer exploits the known geometry of the imaging system to ensure geometric consistency of the feature aggregation. Second, we introduce an end-to-end trainable multi-view detection pipeline based on Faster R-CNN, which derives the region proposals and performs the final classification in 3D using these aggregated multi-view features. Our approach shows significant accuracy gains compared to single-view detection while even being more efficient than performing single-view detection in each view.
机译:出于航空电子安全检查的一部分,检测手提行李中的违禁物体的动机促使我们开发了基于CNN的多视角X射线图像数据物体检测方法。我们的贡献是双重的。首先,我们介绍一种新颖的多视图池化层,以执行从每个视图提取的2D CNN功能的3D聚合。为此,我们的池化层利用成像系统的已知几何形状来确保特征聚合的几何一致性。其次,我们引入了基于Faster R-CNN的端到端可训练多视图检测管道,该管道可导出区域提案并使用这些聚合的多视图特征在3D中执行最终分类。与单视图检测相比,我们的方法显示出显着的准确性提升,甚至比在每个视图中执行单视图检测更有效。

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