The purpose of the paper is to provide innovative emerging technology framework for community to combat epidemic situations. The paper proposes a unique outbreak response system framework based on artificial intelligence and edge computing for citizen centric services to help track and trace people eluding safety policies like mask detection and social distancing measure in public or workplace setup. The framework further provides implementation guideline in industrial setup as well for governance and contact tracing tasks. The adoption will thus lead in smart city planning and development focusing on citizen health systems contributing to improved quality of life. The conceptual framework presented is validated through quantitative data analysis via secondary data collection from researcher's public websites, GitHub repositories and renowned journals and further benchmarking were conducted for experimental results in Microsoft Azure cloud environment. The study includes selective AI-models for benchmark analysis and were assessed on performance and accuracy in edge computing environment for large scale societal setup. Overall YOLO model Outperforms in object detection task and is faster enough for mask detection and HRNetV2 outperform semantic segmentation problem applied to solve social distancing task in AI-Edge inferencing environmental setup. The paper proposes new Edge-AI algorithm for building technology-oriented solutions for detecting mask in human movement and social distance. The paper enriches the technological advancement in artificial intelligence and edge-computing applied to problems in society and healthcare systems. The framework further equips government agency, system providers to design and constructs technology-oriented models in community setup to Increase the quality of life using emerging technologies into smart urban environments.
翻译:本文的目的是为社区提供创新的新兴技术框架,以防治流行病状况; 该文件提出一个独特的爆发应对系统框架,其依据是人为的智能和边缘计算,为公民中心服务提供人工智能和边缘计算,以帮助跟踪和跟踪在公共或工作场所设置遮罩检测和社会疏离措施等安全政策失灵者; 该框架进一步为工业设置以及治理和联系追踪任务提供了执行准则; 因此,通过该框架将引领智能城市规划和发展,侧重于公民卫生系统,有助于提高生活质量; 所提出的概念框架通过定量数据分析得到验证,通过从研究人员的公共网站、吉特赫布仓库和著名杂志收集二级数据,为微软阿祖云环境中的实验结果进行定量数据分析与边际计算系统计算; 研究包括有选择的AI模型,用于基准分析,并评估边缘计算环境环境环境环境的性环境的性能和准确性能,以便大规模社会设置社会结构; 总体的YOLO模型在目标检测任务方面表现超前,并足够快地用于遮罩检测和HRNetV2的系统,超越结构分解问题; 用于解决AI-EGE 推断环境设置的智能系统中的社会分解任务; 论文建议,在远程设计中采用新的智能智能智能智能技术升级技术,以研究系统,以研究系统,以更新技术升级技术,以研究系统,以研究系统,以研究技术升级技术升级技术,以研究发展进进进进社会结构,以研究。