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Main Authors: Han, Xiaoyi, Wu, Yanfei, Pu, Nan, Feng, Zunlei, Zhang, Qifei, Bei, Yijun, Cheng, Lechao
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2410.16642
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author Han, Xiaoyi
Wu, Yanfei
Pu, Nan
Feng, Zunlei
Zhang, Qifei
Bei, Yijun
Cheng, Lechao
author_facet Han, Xiaoyi
Wu, Yanfei
Pu, Nan
Feng, Zunlei
Zhang, Qifei
Bei, Yijun
Cheng, Lechao
contents An effective Fire and Smoke Detection (FSD) and analysis system is of paramount importance due to the destructive potential of fire disasters. However, many existing FSD methods directly employ generic object detection techniques without considering the transparency of fire and smoke, which leads to imprecise localization and reduces detection performance. To address this issue, a new Attentive Fire and Smoke Detection Model (a-FSDM) is proposed. This model not only retains the robust feature extraction and fusion capabilities of conventional detection algorithms but also redesigns the detection head specifically for transparent targets in FSD, termed the Attentive Transparency Detection Head (ATDH). In addition, Burning Intensity (BI) is introduced as a pivotal feature for fire-related downstream risk assessments in traditional FSD methodologies. Extensive experiments on multiple FSD datasets showcase the effectiveness and versatility of the proposed FSD model. The project is available at \href{https://xiaoyihan6.github.io/FSD/}{https://xiaoyihan6.github.io/FSD/}.
format Preprint
id arxiv_https___arxiv_org_abs_2410_16642
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Fire and Smoke Detection with Burning Intensity Representation
Han, Xiaoyi
Wu, Yanfei
Pu, Nan
Feng, Zunlei
Zhang, Qifei
Bei, Yijun
Cheng, Lechao
Computer Vision and Pattern Recognition
An effective Fire and Smoke Detection (FSD) and analysis system is of paramount importance due to the destructive potential of fire disasters. However, many existing FSD methods directly employ generic object detection techniques without considering the transparency of fire and smoke, which leads to imprecise localization and reduces detection performance. To address this issue, a new Attentive Fire and Smoke Detection Model (a-FSDM) is proposed. This model not only retains the robust feature extraction and fusion capabilities of conventional detection algorithms but also redesigns the detection head specifically for transparent targets in FSD, termed the Attentive Transparency Detection Head (ATDH). In addition, Burning Intensity (BI) is introduced as a pivotal feature for fire-related downstream risk assessments in traditional FSD methodologies. Extensive experiments on multiple FSD datasets showcase the effectiveness and versatility of the proposed FSD model. The project is available at \href{https://xiaoyihan6.github.io/FSD/}{https://xiaoyihan6.github.io/FSD/}.
title Fire and Smoke Detection with Burning Intensity Representation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2410.16642