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On the Evaluation of Semi-Supervised 2D Segmentation for Volumetric 3D Computed Tomography Baggage Security Screening

机译:三维ct行李安检中半监督二维分割的评价

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We address the automatic contraband material detection problem within volumetric 3D Computed Tomography (CT) data for baggage security screening. Distinct from the prohibited item detection using object detection techniques, contraband material detection is usually formulated as a segmentation problem due to the variations of their potential appearances and shapes. Previous studies have employed either morphological operation based traditional methods or 3D Convolutional Neural Networks (CNN) for 3D segmentation towards target material detection within volumetric 3D CT baggage security screening imagery. In this work, we investigate the effectiveness of 2D semantic segmentation techniques in this 3D CT segmentation problem. Specifically, we extract 2D slices from three planes of the 3D CT volumes and train a 2D segmentation model which is subsequently used to predict segmentation results for all the slices from a given test CT volume. Moreover, we also evaluate how the performance is affected when using a reduced number of annotated slices for training. As a result, it is demonstrated reasonable performance can be achieved with very limited annotated slices (1–2) per CT volume during training. Finally, we propose a semi-supervised learning framework for 3D CT segmentation. Using only 1/128 of the total number of annotated slices, our framework can achieve comparable performance with full supervision.
机译:我们在用于行李安全筛查的三维计算机断层扫描(CT)数据中解决自动违禁品检测问题。与使用目标检测技术的违禁物品检测不同,由于违禁物品潜在外观和形状的变化,违禁物品检测通常被描述为一个分割问题。之前的研究已经使用基于形态学操作的传统方法或三维卷积神经网络(CNN)对三维CT行李安检图像中的目标材料进行三维分割。在这项工作中,我们研究了2D语义分割技术在3D CT分割问题中的有效性。具体来说,我们从3D CT体积的三个平面提取2D切片,并训练2D分割模型,该模型随后用于预测给定测试CT体积中所有切片的分割结果。此外,我们还评估了在使用较少的带注释切片进行训练时,性能是如何受到影响的。结果表明,在训练期间,每个CT体积的有限注释切片(1-2)可以实现合理的性能。最后,我们提出了一个用于3D CT分割的半监督学习框架。我们的框架仅使用带注释切片总数的1/128,就可以在完全监督的情况下实现相当的性能。

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