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Fall Safe: Real-Time Fall Detection System

Abstract

Fall Safe is designed to address fall-related injuries among vulnerable populations by leveraging computer vision and machine learning. The system detects falls in real-time from CCTV footage, analyzing video streams to identify abnormal movements and postures. Alerts are sent to caregivers or emergency services with details about the incident, aiming to improve response times and safety for at-risk individuals.

Features

  • Real-Time Fall Detection: Utilizes YOLOv8 for accurate fall detection.
  • Integration: Works with existing CCTV setups.
  • Alerts: Sends notifications with incident details to caregivers or emergency services.

Getting Started

Read WIKI to get Started

Contributing

Contributions are welcome! Please open an issue or submit a pull request if you have improvements or suggestions.

License

This project is licensed under the MIT License - see the LICENSE file for details.

Contact

For any questions or feedback, please contact us at Issues Pages.

Authors


Fall Safe is developed by the above contributors. For more information, visit our GitHub repository.

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A real-time fall detection system using computer vision and machine learning to analyze CCTV footage and alert caregivers.

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