HRNET: AI on Edge for mask detection and social distancing
Kinshuk Sengupta, Praveen Ranjan Srivastava

TL;DR
This paper introduces a novel Edge-AI framework utilizing HRNetV2 and YOLO models for mask detection and social distancing, validated through benchmarking in cloud environments to enhance public health safety.
Contribution
It presents a new Edge-AI algorithm and a comprehensive framework for epidemic response, integrating AI models for mask detection and social distancing in smart city applications.
Findings
YOLO model outperforms in object detection speed and accuracy
HRNetV2 excels in semantic segmentation for social distancing
Framework validated with quantitative data and benchmarking in Azure cloud
Abstract
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…
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Code & Models
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Taxonomy
TopicsCOVID-19 Digital Contact Tracing · COVID-19 diagnosis using AI · Anomaly Detection Techniques and Applications
MethodsYou Only Look Once
