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A Deep-Learning-Based Approach to the Classification of Fire Types

Eshrag Refaee, Abdullah Sheneamer, Basem Assiri

2024Applied Sciences12 citationsDOIOpen Access PDF

Abstract

The automatic detection of fires and the determination of their causes play a crucial role in mitigating the catastrophic consequences of such events. The literature reveals substantial research on automatic fire detection using machine learning models. However, once a fire is detected, there is a notable gap in the literature concerning the automatic classification of fire types like solid-material fires, flammable gas fires, and electric-based fires. This classification is essential for firefighters to quickly and effectively determine the most appropriate fire suppression method. This work introduces a benchmark dataset comprising over 1353 manually annotated images, classified into five categories, which is publicly released. It introduces a multiclass dataset based on the types of origins of fires. This work also presents a system incorporating eight deep-learning models evaluated for fire detection and fire-type classification. In fire-type classification, this work focuses on four fire types: solid material, chemical, electrical-based, and oil-based fires. Under the single-level, five-way classification setting, our system achieves its best performance with an accuracy score of 94.48%. Meanwhile, under the two-level classification setting, our system achieves its best performance with accuracy scores of 98.16% for fire detection and 97.55% for fire-type classification, using the DenseNet121 and EffecientNet-b0 models, respectively. The results also indicate that electrical and oil-based fires are the most challenging to detect.

Topics & Concepts

Artificial intelligenceComputer scienceFire Detection and Safety SystemsFire dynamics and safety researchFire effects on ecosystems
A Deep-Learning-Based Approach to the Classification of Fire Types | Litcius