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用于自主分割隐藏违禁行李物品的半监督轮廓驱动广义学习系统。

Semi-supervised contour-driven broad learning system for autonomous segmentation of concealed prohibited baggage items.

作者信息

Velayudhan Divya, Ahmed Abdelfatah, Hassan Taimur, Owais Muhammad, Gour Neha, Bennamoun Mohammed, Damiani Ernesto, Werghi Naoufel

机构信息

Department of Electrical Engineering and Computer Sciences, Center for Cyber-Physical Systems, Khalifa University of Science and Technology, Abu Dhabi, 127788, United Arab Emirates.

Department of Electrical, Computer and Biomedical Engineering, Abu Dhabi University, Abu Dhabi, 59911, United Arab Emirates.

出版信息

Vis Comput Ind Biomed Art. 2024 Dec 24;7(1):30. doi: 10.1186/s42492-024-00182-7.

Abstract

With the exponential rise in global air traffic, ensuring swift passenger processing while countering potential security threats has become a paramount concern for aviation security. Although X-ray baggage monitoring is now standard, manual screening has several limitations, including the propensity for errors, and raises concerns about passenger privacy. To address these drawbacks, researchers have leveraged recent advances in deep learning to design threat-segmentation frameworks. However, these models require extensive training data and labour-intensive dense pixel-wise annotations and are finetuned separately for each dataset to account for inter-dataset discrepancies. Hence, this study proposes a semi-supervised contour-driven broad learning system (BLS) for X-ray baggage security threat instance segmentation referred to as C-BLX. The research methodology involved enhancing representation learning and achieving faster training capability to tackle severe occlusion and class imbalance using a single training routine with limited baggage scans. The proposed framework was trained with minimal supervision using resource-efficient image-level labels to localize illegal items in multi-vendor baggage scans. More specifically, the framework generated candidate region segments from the input X-ray scans based on local intensity transition cues, effectively identifying concealed prohibited items without entire baggage scans. The multi-convolutional BLS exploits the rich complementary features extracted from these region segments to predict object categories, including threat and benign classes. The contours corresponding to the region segments predicted as threats were then utilized to yield the segmentation results. The proposed C-BLX system was thoroughly evaluated on three highly imbalanced public datasets and surpassed other competitive approaches in baggage-threat segmentation, yielding 90.04%, 78.92%, and 59.44% in terms of mIoU on GDXray, SIXray, and Compass-XP, respectively. Furthermore, the limitations of the proposed system in extracting precise region segments in intricate noisy settings and potential strategies for overcoming them through post-processing techniques were explored (source code will be available at https://github.com/Divs1159/CNN_BLS .).

摘要

随着全球航空客流量呈指数级增长,在应对潜在安全威胁的同时确保旅客快速通关已成为航空安全的首要关注点。尽管X射线行李监测现已成为标准做法,但人工安检存在若干局限性,包括容易出错,还引发了对旅客隐私的担忧。为解决这些缺点,研究人员利用深度学习的最新进展设计了威胁分割框架。然而,这些模型需要大量的训练数据和劳动密集型的密集像素级标注,并且需要针对每个数据集分别进行微调,以解决数据集之间的差异。因此,本研究提出了一种用于X射线行李安全威胁实例分割的半监督轮廓驱动广义学习系统(BLS),称为C-BLX。研究方法包括增强表征学习并实现更快的训练能力,以便使用有限的行李扫描进行单一训练程序来应对严重遮挡和类别不平衡问题。所提出的框架使用资源高效的图像级标签进行最小监督训练,以在多供应商行李扫描中定位非法物品。更具体地说,该框架根据局部强度过渡线索从输入的X射线扫描中生成候选区域片段,无需对整个行李进行扫描就能有效识别隐藏的违禁物品。多卷积BLS利用从这些区域片段中提取的丰富互补特征来预测物体类别,包括威胁和良性类别。然后利用预测为威胁的区域片段对应的轮廓来生成分割结果。所提出的C-BLX系统在三个高度不平衡的公共数据集上进行了全面评估,在行李威胁分割方面超过了其他竞争方法,在GDXray、SIXray和Compass-XP上的平均交并比分别为90.04%、78.92%和59.44%。此外,还探讨了所提出系统在复杂噪声环境中提取精确区域片段的局限性以及通过后处理技术克服这些局限性的潜在策略(源代码将在https://github.com/Divs1159/CNN_BLS上提供。)

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0ac9/11666859/05c3229dc9b0/42492_2024_182_Fig1_HTML.jpg

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