From Lab to Field: Real-World Evaluation of an AI-Driven Smart Video Solution to Enhance Community Safety
Shanle Yao, Babak Rahimi Ardabili, Armin Danesh Pazho, Ghazal Alinezhad Noghre, Christopher Neff, Lauren Bourque, Hamed Tabkhi

TL;DR
This paper presents a comprehensive real-world evaluation of an AI-driven Smart Video Solution (SVS) that enhances community safety by integrating AI, privacy standards, and real-time alerts across multiple cameras in a community setting.
Contribution
It introduces a novel integrated AI-based system for community safety, combining advanced data visualization, privacy considerations, and real-time alerting in a real-world deployment.
Findings
System manages 16 cameras with 16.5 FPS throughput.
Average latency from detection to alert is 26.76 seconds.
Demonstrates robustness and effectiveness in real-world community environment.
Abstract
This article adopts and evaluates an AI-enabled Smart Video Solution (SVS) designed to enhance safety in the real world. The system integrates with existing infrastructure camera networks, leveraging recent advancements in AI for easy adoption. Prioritizing privacy and ethical standards, pose based data is used for downstream AI tasks such as anomaly detection. Cloud-based infrastructure and mobile app are deployed, enabling real-time alerts within communities. The SVS employs innovative data representation and visualization techniques, such as the Occupancy Indicator, Statistical Anomaly Detection, Bird's Eye View, and Heatmaps, to understand pedestrian behaviors and enhance public safety. Evaluation of the SVS demonstrates its capacity to convert complex computer vision outputs into actionable insights for stakeholders, community partners, law enforcement, urban planners, and social…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Data-Driven Disease Surveillance
