Title |
Visual Intelligence in Smart Cities: A Lightweight Deep Learning Model for Fire Detection in an IoT Environment |
ID_Doc |
44667 |
Authors |
Nadeem, M; Dilshad, N; Alghamdi, NS; Dang, LM; Song, HK; Nam, J; Moon, H |
Title |
Visual Intelligence in Smart Cities: A Lightweight Deep Learning Model for Fire Detection in an IoT Environment |
Year |
2023 |
Published |
Smart Cities, 6, 5 |
DOI |
10.3390/smartcities6050103 |
Abstract |
The recognition of fire at its early stages and stopping it from causing socioeconomic and environmental disasters remains a demanding task. Despite the availability of convincing networks, there is a need to develop a lightweight network for resource-constraint devices rather than real-time fire detection in smart city contexts. To overcome this shortcoming, we presented a novel efficient lightweight network called FlameNet for fire detection in a smart city environment. Our proposed network works via two main steps: first, it detects the fire using the FlameNet; then, an alert is initiated and directed to the fire, medical, and rescue departments. Furthermore, we incorporate the MSA module to efficiently prioritize and enhance relevant fire-related prominent features for effective fire detection. The newly developed Ignited-Flames dataset is utilized to undertake a thorough analysis of several convolutional neural network (CNN) models. Additionally, the proposed FlameNet achieves 99.40% accuracy for fire detection. The empirical findings and analysis of multiple factors such as model accuracy, size, and processing time prove that the suggested model is suitable for fire detection. |
Author Keywords |
disaster management; fire monitoring; fire classification; deep learning; MobileNet; lightweight model; internet of things; smart cities |
Index Keywords |
Index Keywords |
Document Type |
Other |
Open Access |
Open Access |
Source |
Emerging Sources Citation Index (ESCI) |
EID |
WOS:001089966800001 |
WoS Category |
Engineering, Electrical & Electronic; Urban Studies |
Research Area |
Engineering; Urban Studies |
PDF |
https://www.mdpi.com/2624-6511/6/5/103/pdf?version=1693210772
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