Abstract

Fire incidents in public spaces pose significant risks to life and property. Traditional fire detection systems often suffer from delays and inaccuracies, necessitating the development of advanced solutions. This paper presents a comprehensive system for integrating fire detection and personnel accountability in surveillance scenarios. With the increasing concerns about safety in public spaces, the need for effective systems to detect fires and ensure personnel safety has become paramount. Traditional methods rely on manual intervention or basic sensors, often resulting in delayed or inaccurate alerts. To address these challenges, our system employs advanced image processing and machine learning to enhance safety measures. By analyzing surveillance camera feeds, it detects changes in pixel intensity, smoke patterns, and heat signatures to identify potential fire incidents. Machine learning models, such as convolutional neural networks (CNNs), are trained to accurately classify fire and non-fire regions in video frames. Additionally, the system tracks personnel presence and movement, ensuring accountability within the surveillance area. Modular and scalable, our system integrates seamlessly with existing infrastructure, providing reliable fire detection and personnel monitoring. Experimental results demonstrate its effectiveness, contributing to enhanced safety in public spaces and facilitating prompt emergency responses.

Full Text
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