The occurrence of fire incidents is considered one of the common hazards which not only risks human lives, but also impacts economy and environment. Detecting fire and smoke in its initial stages is highly important to prevent them from becoming uncontrollable. Conventional sensor-based detectors have limitations such as geographic area coverage, time required to reach the sensor, and false alarm rates. However, traditional sensor-based detectors are being substituted with smart video-based detectors. These provide effective monitoring, detection and detailed analysis of smoke and fires in both indoor/outdoor environments. This study introduced a real-time automated artificial intelligence (AI)-based video model for early-stage detection of smoke and fire, effectively mitigating false alarms caused by clouds, fogs or other fire-colored backgrounds or objects. The model Dual Attention Multi-Resolution Three-Dimensional Network with Positional Gating Unit (DAMR3DNet_PGU) was trained using hybrid Spatio-Temporal Residual Neural Network and Transformer architecture (Transformer) with Positional Gating on a wide range of unique smoke and fire patterns sourced from publicly available benchmark video datasets. Experiment results illustrated significant improvements in True Positive Rate (TPR), True Negative Rate (TNR), False Positive (FP), False Negative (FN), false alarm and accuracy, when compared with various state-of-the-art methods. The efficacy of the proposed DAMR3DNet_PGU method utilizing conventional closed-circuit television (CCTV) cameras for fire and smoke detection was affirmed. The proposed technique demonstrated robust performance across multiple datasets. It achieved high accuracy rates for smoke and fire detection, while significantly reducing false negatives, false alarm and with lightweight model compared to existing approaches.
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