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Multi-Class 3D Object Detection Within Volumetric 3D Computed Tomography Baggage Security Screening Imagery

机译:多级3D对象检测体积3D计算断层扫描行李安全筛选图像

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Automatic detection of prohibited objects within passenger baggage is important for aviation security. X-ray Computed Tomography (CT) based 3D imaging is widely used in airports for aviation security screening whilst prior work on automatic prohibited item detection focus primarily on 2D X-ray imagery. Whilst some prior work has proven the possibility of extending deep convolutional neural networks (CNN) based automatic prohibited item detection from 2D X-ray imagery to volumetric 3D CT baggage security screening imagery, it focuses on the detection of one specific type of objects (e.g., either bottles or handguns). As a result, multiple models are needed if more than one type of prohibited item is required to be detected in practice. In this paper, we consider the detection of multiple object categories of interest using one unified framework. To this end, we formulate a more challenging multi-class 3D object detection problem within 3D CT imagery and propose a viable solution (3D RetinaNet) to tackle this problem. To enhance the performance of detection we investigate a variety of strategies including data augmentation and varying backbone networks. Experimentation carried out to provide both quantitative and qualitative evaluations of the proposed approach to multi-class 3D object detection within 3D CT baggage security screening imagery. Experimental results demonstrate the combination of the 3D RetinaNet and a series of favorable strategies can achieve a mean Average Precision (mAP) of 65.3% over five object classes (i.e. bottles, handguns, binoculars, glock frames, iPods). The overall performance is affected by the poor performance on glock frames and iPods due to the lack of data and their resemblance with the baggage clutter.
机译:自动检测客运行李内的禁止物体对航空安全性很重要。基于X射线计算机断层扫描(CT)的3D成像广泛用于航空安全筛选的机场,同时在自动禁止的物品检测上侧重于2D X射线图像。虽然一些事先工作已经证明,从2D X射线图像延伸到基于深度卷积神经网络(CNN)的自动禁止物品检测到体积3D CT行李安全筛选图像,但它侧重于检测一种特定类型的物体(例如,瓶子或手枪)。结果,如果需要在实践中检测到多种类型的禁止项目,则需要多种型号。在本文中,我们考虑使用一个统一的框架检测多个对象类别的兴趣类别。为此,我们在3D CT图像中制定了更具挑战的多级3D对象检测问题,并提出了一种可行的解决方案(3D RetinAnet)来解决这个问题。为了增强检测的性能,我们调查各种策略,包括数据增强和不同的骨干网络。实验开展,为3D CT行李安全筛选图像中提出的多级3D对象检测方法提供了定量和定性评估。实验结果证明了3D视网网和一系列有利策略的组合可以达到65.3%的平均平均精度(图)超过五个物体类(即瓶子,手枪,双筒望远镜,Glock框架,iPod)。由于缺乏数据及其与行李杂乱的相似性,整体性能受到Glock帧和iPod的性能不佳的影响。

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