Integrating Deep Learning and Augmented Reality to Enhance Situational Awareness in Firefighting Environments
Manish Bhattarai

TL;DR
This paper introduces an integrated AI system combining deep learning and augmented reality to significantly improve firefighters' situational awareness, safety, and rescue efficiency in emergency environments.
Contribution
It presents a novel multi-layered deep learning framework integrated with augmented reality to enhance real-time decision-making and safety for firefighters in hazardous conditions.
Findings
Real-time object classification from thermal images
Enhanced scene understanding with Mask R-CNN and NLP
AI-driven navigation and anomaly detection in fire environments
Abstract
We present a new four-pronged approach to build firefighter's situational awareness for the first time in the literature. We construct a series of deep learning frameworks built on top of one another to enhance the safety, efficiency, and successful completion of rescue missions conducted by firefighters in emergency first response settings. First, we used a deep Convolutional Neural Network (CNN) system to classify and identify objects of interest from thermal imagery in real-time. Next, we extended this CNN framework for object detection, tracking, segmentation with a Mask RCNN framework, and scene description with a multimodal natural language processing(NLP) framework. Third, we built a deep Q-learning-based agent, immune to stress-induced disorientation and anxiety, capable of making clear navigation decisions based on the observed and stored facts in live-fire environments.…
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Taxonomy
TopicsFire Detection and Safety Systems · Evacuation and Crowd Dynamics · Human Pose and Action Recognition
