Knowledge Agora



Scientific Article details

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
Similar atricles
Scroll