2015
DOI: 10.24212/2179-3565.2015v6i2p130-138
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Smoke Image Segmentation Based on Color Model

Abstract: Abstract:Smoke is the most significant feature in the process of fire, so it's possible to rely on smoke detection to detect fire. While the smoke image segmentation is the most difficult and also indispensable step in the analysis of smoke image detection. In order to improve its accuracy and effectively exclude the disturbances of non-smoke image, and lower the false alarm rate, it puts forward a kind of smoke image segmentation based on color model. It uses K-means clustering in Lab color space and threshol… Show more

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Cited by 8 publications
(3 citation statements)
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“…Although current semantic segmentation methods (Long, Shelhamer, and Darrell 2015;Lin et al 2017;Chen et al 2018;Strudel et al 2021;Xie et al 2021;Cheng et al 2022) are effective at segmenting regular objects (i.e., those with clear outlines and roughly the same shape), these generic algorithms are not suitable for early smoke segmentation due to its varying transparency and small scale. Traditional smoke segmentation methods have mainly focused on extracting high-quality color and texture features (Mahmoud and Ren 2019;Xing et al 2015;Yuan, Liu, and Zhang 2019), and deep-learning-based methods (Yuan et al 2022(Yuan et al , 2019aJing, Meng, and Hou 2023) mainly focus on extracting features with larger receptive fields to handle the variability and blurred edges of smoke. However, these methods suffer from high miss detection rate and low precision in segmenting small and transparent early smoke.…”
Section: Related Workmentioning
confidence: 99%
“…Although current semantic segmentation methods (Long, Shelhamer, and Darrell 2015;Lin et al 2017;Chen et al 2018;Strudel et al 2021;Xie et al 2021;Cheng et al 2022) are effective at segmenting regular objects (i.e., those with clear outlines and roughly the same shape), these generic algorithms are not suitable for early smoke segmentation due to its varying transparency and small scale. Traditional smoke segmentation methods have mainly focused on extracting high-quality color and texture features (Mahmoud and Ren 2019;Xing et al 2015;Yuan, Liu, and Zhang 2019), and deep-learning-based methods (Yuan et al 2022(Yuan et al , 2019aJing, Meng, and Hou 2023) mainly focus on extracting features with larger receptive fields to handle the variability and blurred edges of smoke. However, these methods suffer from high miss detection rate and low precision in segmenting small and transparent early smoke.…”
Section: Related Workmentioning
confidence: 99%
“…Although this method could segment smoke regions, the integrity of the main body of smoke was not strong, and the segmentation performance of the overall shape and edge regions of smoke was poor. Deng Xing et al [24] proposed combining the results of K-means clustering in the Lab color space and threshold segmentation in the HSV color space, followed by filtering and region labeling for noise removal. This method could segment the main body of smoke, but some non-smoke regions were still segmented.…”
Section: Smoke Segmentationmentioning
confidence: 99%
“…Haridasan et al [47] applied multiple color space transforms to RGB fire images with flame areas and fused the resulting features using concatenation to improve classification performance. Xing D et al [48] achieved refined smoke segmentation results by merging smoke segmentation regions using HSV and LAB color spaces. Similarly, Prema E et al [49] and Pundir, A.S. et al [50] used color spaces (YUV and YCbCr, respectively) as color criteria and combined them with other feature extraction analyses to detect smoke presence in video frames.…”
Section: Introductionmentioning
confidence: 99%