Edge-based fever screening system over private 5G

Murugan Sankaradas, Kunal Rao, Ravi Rajendran, Amit Redkar, S. Chakradhar
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Abstract

Edge computing and 5G have made it possible to perform analytics closer to the source of data and achieve super-low latency response times, which isn't possible with centralized cloud deployment. In this paper, we present a novel fever screening system, which uses edge machine learning techniques and leverages private 5G to accurately identify and screen individuals with fever in real-time. Particularly, we present deep-learning based novel techniques for fusion and alignment of cross-spectral visual and thermal data streams at the edge. Our novel Cross-Spectral Generative Adversarial Network (CS-GAN) synthesizes visual images that have the key, representative object level features required to uniquely associate objects across visual and thermal spectrum. Two key features of CS-GAN are a novel, feature-preserving loss function that results in high-quality pairing of corresponding cross-spectral objects, and dual bottleneck residual layers with skip connections (a new, network enhancement) to not only accelerate real-time inference, but to also speed up convergence during model training at the edge. To the best of our knowledge, this is the first technique that leverages 5G networks and limited edge resources to enable real-time feature-level association of objects in visual and thermal streams (30 ms per full HD frame on an Intel Core i7-8650 4-core, 1.9GHz mobile processor). To the best of our knowledge, this is also the first system to achieve real-time operation, which has enabled fever screening of employees and guests in arenas, theme parks, airports and other critical facilities. By leveraging edge computing and 5G, our fever screening system is able to achieve 98.5% accuracy and is able to process ∼ 5X more people when compared to a centralized cloud deployment.
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基于边缘的专用5G发烧筛查系统
边缘计算和5G使得更接近数据源的分析成为可能,并实现超低延迟响应时间,这是集中式云部署无法实现的。在本文中,我们提出了一种新的发烧筛查系统,该系统使用边缘机器学习技术并利用私有5G实时准确识别和筛查发烧个体。特别是,我们提出了基于深度学习的新技术,用于融合和对齐边缘的跨光谱视觉和热数据流。我们的新型跨光谱生成对抗网络(CS-GAN)合成了具有关键代表性对象级特征的视觉图像,这些特征需要在视觉和热光谱中唯一地关联对象。CS-GAN的两个关键特征是一种新颖的、保持特征的损失函数,它可以产生高质量的对应交叉谱目标配对,以及具有跳过连接的双瓶颈残差层(一种新的网络增强),不仅可以加速实时推理,还可以加快边缘模型训练过程中的收敛速度。据我们所知,这是第一个利用5G网络和有限的边缘资源来实现视觉和热流中对象的实时功能级关联的技术(在英特尔酷睿i7-8650 4核1.9GHz移动处理器上,每全高清帧30毫秒)。据我们所知,这也是第一个实现实时运行的系统,可以对竞技场、主题公园、机场和其他关键设施的员工和客人进行发烧筛查。通过利用边缘计算和5G,我们的发烧筛查系统能够达到98.5%的准确率,并且与集中式云部署相比,能够处理多5倍的人。
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