Research on airport baggage anomaly retention detection technology based on machine vision, edge computing, and blockchain

IET Blockchain Pub Date : 2024-07-15 DOI:10.1049/blc2.12082
Yuzhou Chen, Gang Mao, Xue Yang, Mingqian Du, Hongqing Song
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引用次数: 0

Abstract

Airport checked luggage entails specific requirements for speed, stability, and reliability. The issue of abnormal retention of checked luggage presents a significant challenge to aviation safety and transportation efficiency. Traditional luggage monitoring systems exhibit limitations in terms of accuracy and timeliness. To address this challenge, this paper proposes a real‐time detection and alerting of luggage anomaly retention based on the YOLOv5 object detection model, leveraging visual algorithms. By eliminating cloud servers and deploying multiple edge servers to establish a private chain, images of anomalously retained luggage are encrypted and stored on the chain. Data users can verify the authenticity of accessed images through anti‐tampering algorithms, ensuring the security of data transmission and storage. The deployment of edge computing servers can significantly reduce algorithm latency and enhance real‐time performance. This solution employs computer vision technology and an edge computing framework to address the speed and stability of checked luggage transportation. Furthermore, blockchain technology greatly enhances system security during operation. A model trained on a sample set of 4600 images achieved a luggage recognition rate of 96.9% and an anomaly detection rate of 95.8% in simulated test videos.
基于机器视觉、边缘计算和区块链的机场行李异常保留检测技术研究
机场托运行李对速度、稳定性和可靠性有特殊要求。托运行李的异常滞留问题给航空安全和运输效率带来了巨大挑战。传统的行李监控系统在准确性和及时性方面存在局限性。为应对这一挑战,本文基于 YOLOv5 物体检测模型,利用视觉算法,提出了行李异常滞留的实时检测和报警方法。通过取消云服务器并部署多个边缘服务器来建立私有链,对异常保留行李的图像进行加密并存储在链上。数据用户可通过防篡改算法验证访问图像的真实性,确保数据传输和存储的安全性。部署边缘计算服务器可大大减少算法延迟,提高实时性。该解决方案采用计算机视觉技术和边缘计算框架,解决了托运行李运输的速度和稳定性问题。此外,区块链技术大大增强了系统运行过程中的安全性。在模拟测试视频中,基于 4600 张图像样本集训练的模型实现了 96.9% 的行李识别率和 95.8% 的异常检测率。
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CiteScore
1.80
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