A SMART PREDICTIVE SYSTEM FOR HUMAN STAMPEDE DETECTION

Authors

  • B. Karthik Anupam Author
  • S. Divya Nayana Author
  • B. Srivarshitha Author
  • Mr. K Hari Veeraju Author

DOI:

https://doi.org/10.62643/ijerst.2026.v22.n2.pp99-104

Keywords:

Human Stampede Prediction; YOLOv9; Computer Vision; Crowd Density Analysis; Real-Time Monitoring; Public Safety; Flask; Python; Crowd Management; Event Safety; Machine Learning

Abstract

Human stampedes in public events pose significant safety risks, and early prediction is crucial for preventing accidents and ensuring crowd safety. This project presents a Smart Predictive System for Human Stampede Detection and Crowd Safety Management that leverages computer vision techniques to analyze crowd density and perform real-time human counting. The system utilizes a large-scale annotated dataset of 19,241 images sourced via Roboflow to fine-tune a YOLOv9 (You Only Look Once version 9) model for crowd monitoring across two object classes: head and person. The primary objective is to predict stampede risks when crowd density exceeds a threshold of 20 individuals in a single camera frame, signaling a potential hazard. A web-based front-end interface is developed using HTML, CSS, and JavaScript for user interaction, while the back-end is implemented using Python and Flask for model deployment and real-time prediction. By integrating advanced computer vision with a rule-based risk classifier, the proposed system achieves a mean average precision ([email protected]) of 85.6% on the test set, outperforming YOLOv5s (78.2%) and YOLOv8s (81.3%) baselines. The findings aim to improve crowd control measures, reduce the risk of stampedes, and contribute to better event management strategies in stadiums, pilgrimage sites, and transit hubs.

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Published

02-04-2026

How to Cite

A SMART PREDICTIVE SYSTEM FOR HUMAN STAMPEDE DETECTION. (2026). International Journal of Engineering Research and Science & Technology, 22(2), 99-104. https://doi.org/10.62643/ijerst.2026.v22.n2.pp99-104