Identifying threat objects using faster region-based convolutional neural networks (faster R-CNN)

Reagan L. Galvez, E. Dadios
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引用次数: 0

Abstract

Automated detection of threat objects in a security X-ray image is vital to prevent unwanted incidents in busy places like airports, train stations, and malls. The manual method of threat object detection is time-consuming and tedious. Also, the person on duty can overlook the threat objects due to limited time in checking every person’s belongings. As a solution, this paper presents a faster region-based convolutional neural network (Faster R-CNN) object detector to automatically identify threat objects in an X-ray image using the IEDXray dataset. The dataset was composed of scanned X-ray images of improvised explosive device (IED) replicas without the main charge. This paper extensively evaluates the Faster R-CNN architecture in threat object detection to determine which configuration can be used to improve the detection performance. Our findings showed that the proposed method could identify three classes of threat objects in X-ray images. In addition, the mean average precision (mAP) of the threat object detector could be improved by increasing the input image's image resolution but sacrificing the detector's speed. The threat object detector achieved 77.59% mAP and recorded an inference time of 208.96 ms by resizing the input image to 900 × 1536 resolution. Results also showed that increasing the bounding box proposals did not significantly improve the detection performance. The mAP using 150 bounding box proposals only achieved 75.65% mAP, and increasing the bounding box proposal twice reduced the mAP to 72.22%.
使用更快的基于区域的卷积神经网络(更快的R-CNN)识别威胁对象
在安检x光图像中自动检测威胁物体对于防止机场、火车站和商场等繁忙场所发生意外事件至关重要。手工检测威胁对象的方法耗时且繁琐。此外,由于检查每个人的随身物品的时间有限,值班人员可以忽略威胁物体。作为解决方案,本文提出了一种更快的基于区域的卷积神经网络(faster R-CNN)目标检测器,用于使用IEDXray数据集自动识别x射线图像中的威胁目标。该数据集由没有主装药的简易爆炸装置(IED)复制品的扫描x射线图像组成。本文广泛评估了Faster R-CNN架构在威胁对象检测中的应用,以确定哪种配置可以提高检测性能。研究结果表明,该方法可以识别出x射线图像中的三类威胁物体。此外,在牺牲检测速度的前提下,提高输入图像的分辨率可以提高威胁目标检测器的平均精度(mAP)。通过将输入图像调整为900 × 1536分辨率,威胁目标检测器的mAP率达到77.59%,推理时间为208.96 ms。结果还表明,增加边界盒建议并没有显著提高检测性能。使用150个边界框提案的mAP只能达到75.65%的mAP,增加两次边界框提案会使mAP降低到72.22%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
International Journal of Advances in Intelligent Informatics
International Journal of Advances in Intelligent Informatics Computer Science-Computer Vision and Pattern Recognition
CiteScore
3.00
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