Benchmarking Multi-Scene Fire and Smoke Detection
Xiaoyi Han,
Nan Pu,
Zunlei Feng,
Yijun Bei,
Qifei Zhang,
Lechao Cheng,
Liang Xue,
Zhejiang University & University of Trento & Hefei University of Technology & Suzhou City University
Accepted to PRCV 2025
Note
Dear Visitor,Hello! If you would like to use our Unified FSD Datasets, please click on the Google Drive link and send a request for access to the shared folder. Thank you.
Best regards,
Xiaoyi Han
### The Five public FSD datasets To access the five public FSD datasets, please click [here](https://drive.google.com/drive/folders/1zMthhy524r1v7nMzLzb12qcvzz9F440a?usp=drive_link).
And, these FSD datasets, include:
1️⃣ 🔥 Fire-Smoke-Dataset, please click here.
✏️ DeepQuestAI, Fire-smoke-dataset (2021). URL https://github.com/DeepQuestAI/Fire-Smoke-Dataset
2️⃣ 🔥 Furg-Fire-Dataset, please click here.
✏️ V. H¨uttner, C. R. Steffens, S. S. da Costa Botelho, First response fire combat: Deep leaning based visible fire detection, in: 2017 Latin American Robotics Symposium (LARS) and 2017 Brazilian Symposium on Robotics (SBR), IEEE, 2017, pp. 1–6. doi:10.1109/SBR-LARS-R.2017.8215312.
3️⃣ 🔥 VisiFire, please click here.
✏️ B. U. Toreyin, A. E. Cetin, Online detection of fire in video, in: 2007 IEEE Conference on Computer Vision and Pattern Recognition, 2007, pp. 1–5. doi: 10.1109/CVPR.2007.383442
4️⃣ 🔥 FIRESENSE, please click here.
✏️ K. Dimitropoulos, P. Barmpoutis, N. Grammalidis, Spatio-temporal flame model- ing and dynamic texture analysis for automatic video-based fire detection, IEEE Transactions on Circuits and Systems for Video Technology 25 (2) (2015) 339–351. doi:10.1109/TCSVT.2014.2339592.
5️⃣ 🔥 BowFire, please click here.
✏️ D. Y. T. Chino, L. P. S. Avalhais, J. F. Rodrigues, A. J. M. Traina, Bowfire: Detection of fire in still images by integrating pixel color and texture analysis, in: 2015 28th SIBGRAPI Conference on Graphics, Patterns and Images, 2015, pp. 95–102. doi:10.1109/SIBGRAPI.2015.19.
At first, we propose a new Multi-Scene Fire and Smoke Detection Benchmark (MS-FSDB) comprising 12,586 images, depicting 2,731 scenes as illustrated in the aforementioned images. Most images within our benchmark possess dimensions exceeding 600 pixels in either length or width. Unlike previous public Fire and Smoke Detection (FSD) datasets, our benchmark not only includes flame detection but also smoke detection tasks. Additionally, it captures complex scenes featuring occlusion, multiple targets, and various viewpoints. To access our MS-FSDB, please click here.
The directory structure of all these FSD Datasets follows the layout below:(1.VisiFire, 2.FIRESENSE, 3.Furg-Fire-Dataset, 4.BowFire, 5.Fire-Smoke-Dataset, 6.MS-FSDB)
FSD Dataset
|
|--data--|--predefined_classes.txt (Fire and Smoke)
|
|--images--|--000001.jpg
|
|--labels--|--000001.xml
|
|--layout--|--train.txt
| |--test.txt
| |--minitrain.txt
| |--minitest.txt
| |...
@InProceedings{han2025prcv, author="Han, Xiaoyi and Pu, Nan and Feng, Zunlei and Bei, Yijun and Zhang, Qifei and Cheng, Lechao and Xue, Liang", editor="Lin, Zhouchen and Cheng, Ming-Ming and He, Ran and Ubul, Kurban and Silamu, Wushouer and Zha, Hongbin and Zhou, Jie and Liu, Cheng-Lin", title="Benchmarking Multi-Scene Fire and Smoke Detection",booktitle="Pattern Recognition and Computer Vision", year="2025", publisher="Springer Nature Singapore", address="Singapore", pages="203--218", abstract="The current irregularities in existing public Fire and Smoke Detection (FSD) datasets have become a bottleneck in the advancement of FSD technology. Upon in-depth analysis, we identify the core issue as the lack of standardized dataset construction, uniform evaluation systems, and clear performance benchmarks. To address this issue and drive innovation in FSD technology, we systematically gather diverse resources from public sources to create a more comprehensive and refined FSD benchmark. Additionally, recognizing the inadequate coverage of existing dataset scenes, we strategically expand scenes, relabel, and standardize existing public FSD datasets to ensure accuracy and consistency. We aim to establish a standardized, realistic, unified, and efficient FSD research platform that mirrors real-life scenes closely. Through our efforts, we aim to provide robust support for the breakthrough and development of FSD technology. The project is available at https://xiaoyihan6.github.io/FSD/.", isbn="978-981-97-8795-1"}
Note: Could you please give me a "one-click triple support"🔥 ("Star"🚀,"Fork"🔖,"Issues"❓)