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Characteristics Based Fire Detection System Under the Effect of Electric Fields With Improved Yolo-v4 and ViBe

Shuai Zhao, Boyun Liu, Zheng Chi, Taiwei Li, Shengnan Li

2022IEEE Access22 citationsDOIOpen Access PDF

Abstract

To address slow image-based detection of fires under the effect of electric fields and its limitation to static fire characteristics, this paper proffersa video-based fire detection system with improved you only look once version 4 (Yolo-v4) and visual background extractor (ViBe) algorithms. The proposed system uses a simplified weighted bi-directional feature pyramid network (Bi-FPN) in place of the path aggregation network (PANet) as a feature fusion network in Yolo-v4. Using multiple dynamic fire characteristics, it can eliminate falsely detected frames. The ViBe algorithm is improved to consider the sudden change of light triggered by fire flickering. Compared with other fire detection algorithms, the proposed system achieves 98.9% fire detection accuracy with a false detection rate of 2.2%. It can extract target fires by adjusting to sudden changes of light using no more than 16 frames. Moreover, the system achieves fire detection with more dynamic fire characteristics compared with the image-based fire detection under the effect of electric fields.

Topics & Concepts

Fire detectionComputer sciencePyramid (geometry)Feature (linguistics)Artificial intelligenceComputer visionFlickerObject detectionFrame rateFeature extractionPattern recognition (psychology)Computer graphics (images)EngineeringMathematicsPhilosophyGeometryArchitectural engineeringLinguisticsFire Detection and Safety SystemsVideo Surveillance and Tracking MethodsIoT-based Smart Home Systems
Characteristics Based Fire Detection System Under the Effect of Electric Fields With Improved Yolo-v4 and ViBe | Litcius