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Rescue Vision: AI Insight for Emergencies
C FAHMI , MEA ENGINEERING COLLEGE, PERINTHALMANNA1
Abstract— To improve safety procedures in a variety of locations, such as workplaces, public areas, and industrial sites, the project aims to create a comprehensive visual surveillance system that integrates fire detection with density counts of people. The system uses computer vision, deep learning, and artificial intelligence (AI) to analyze surveillance camera footage in order to identify fire dangers and count people in real time. It also provides dual alarms to increase fire safety and security. Even under difficult circumstances with congestion or obstacles, the system recognizes human figures using convolutional neural networks (CNNs) and sophisticated object detection models like YOLO and Faster R-CNN. In order to differentiate human bodies from other things in the scene, these models are trained. Even in complex surroundings, the counting functionality en- sures that people are precisely monitored across camera frames, avoiding duplicate counts. The number of people in a place, the movement trajectories, and the density estimation are among the real-time outputs produced by the system. In addition, it may identify odd behavior of the crowd, such as congestion or abnormal movements, which can set alarms to help operational monitoring and security personnel. Furthermore, automatic crowd control solutions are made possible by the technology’s seamless integration with the current monitoring infrastructure. Rapid and precise detection is crucial because fire occurrences pose serious risks to people, property, and the environment. The efficacy of traditional fire monitoring systems is limited since they frequently rely on manual observation or simple sensors. A more sophisticated approach is provided by the suggested AI- powered fire monitoring system, which uses computer vision, Internet of Things sensors, and AI algorithms to identify fire outbreaks in real time, forecast their spread, and start automated reactions. These devices have the ability to detect fires, predict their path, and initiate emergency responses, including notifying emergency personnel, directing evacuations, and initiating fire suppression techniques. Artificial intelligence (AI) technologies are highly effective in analyzing visual and sensor data to quickly identify fire dangers in complex contexts such as metropolitan regions, industrial zones, and forests. Faster reaction times are ensured by the system’s integration with crisis response protocols, which may prevent harm and save lives. The technology offers a strong tool to improve safety in both public and private areas by merging human density monitoring with fire detection. All things considered, our AI- powered surveillance system provides reliable real-time fire detection and crowd monitoring, improving the effectiveness of emergency response, security control, and general safety in a variety of settings.
Keywords: Dual Alarms, Congestion Detection, Automated Crowd Control, Fire Spread Prediction, Crisis Response Pro- tocol, Emergency Evacuation