Study on the Image Processing Methods for a Flame Exposed to an Incense Smoke Environment
Abstract
:1. Introduction
2. Materials and Methods
2.1. Description of Image Treatment Methods
2.1.1. Introduction of Haze Removal Using Dark Channel Prior
2.1.2. Introduction of Variational Image Dehazing Using a Fuzzy Membership Function
2.1.3. Introduction of Real-Time Polarimetric Dehazing
2.1.4. Introduction of Multi-Scale Retinex for Color Image Enhancement
2.1.5. Introduction of Improved Self-Adaptive Image Histogram Equalization Algorithm
2.1.6. Introduction of the Automatic Color Equalization Algorithm
2.2. Description of the Flame Observation Test
3. Results
3.1. Flame Observation Change with Varying Smoke Concentration
3.2. The Smoke Processing Methods’ Influence on Flame Identification
4. Discussion
5. Conclusions
- (1)
- The sharpness of flame image varies with the incense smoke concentration. Dense smoke has a significant impact on the flame observation of image-based fire detection systems. In traditional historic buildings, the flame image treatment should be well considered because of the unique Chinese culture involving the combustion of incense. Without using the image processing method, the flame is not easily detected accurately and timely. The suitable image processing methods should be selected and compared regarding the fixed conditions.
- (2)
- When the flame is exposed to a thin incense smoke, nearly all the methods are effective for flame identification. Although it is found that the flame image treated by the self-adaptive image histogram equalization method makes the entire image blurry, it still works well under the usual condition. When the retinex algorithm method is used for image treatment, the blue color appearing around the flame may have a small impact on the flame area detection.
- (3)
- During traditional Chinese holidays, flame recognition of ancient buildings such as historical temples is the focus of research, because they are surrounded by thick smoke, which will cause huge casualties and property damage in case of fire. When the flame is surrounded by thick smoke, using retinex algorithm to process the image can obtain a clear flame outline, which is a good solution to this problem.
Author Contributions
Funding
Conflicts of Interest
References
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Sun, B.; Zhang, W.; Wang, W.; Hao, D. Study on the Image Processing Methods for a Flame Exposed to an Incense Smoke Environment. Fire 2023, 6, 270. https://doi.org/10.3390/fire6070270
Sun B, Zhang W, Wang W, Hao D. Study on the Image Processing Methods for a Flame Exposed to an Incense Smoke Environment. Fire. 2023; 6(7):270. https://doi.org/10.3390/fire6070270
Chicago/Turabian StyleSun, Biao, Weishan Zhang, Wei Wang, and Danping Hao. 2023. "Study on the Image Processing Methods for a Flame Exposed to an Incense Smoke Environment" Fire 6, no. 7: 270. https://doi.org/10.3390/fire6070270
APA StyleSun, B., Zhang, W., Wang, W., & Hao, D. (2023). Study on the Image Processing Methods for a Flame Exposed to an Incense Smoke Environment. Fire, 6(7), 270. https://doi.org/10.3390/fire6070270