Video flame detection algorithm based on region growing

Ligang Miao, Aizhong Wang
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引用次数: 6

Abstract

This paper proposes a region growing based video flame detection algorithm. Firstly, it estimates class-conditional probability density of flame and background with hand-labeled samples, and five discrimination models are proposed using maximum a-posteriori theory. Secondly, it proposes four rules for flame detection with difference of RGB channels, and ROC analysis is used to estimate rule parameters. Finally, it combines the detection results of these models and rules to detect the candidate flame regions. Region growing uses the high belief region as seed points, and some middle belief regions are classified as flame region if they are adjacent to high belief region, while other regions are classified as background regions. Experiments show that this method can achieve desired flame region in various scenes with high true positive rate and low false detection rate.
基于区域增长的视频火焰检测算法
提出了一种基于区域增长的视频火焰检测算法。首先,对手工标记样本火焰和背景的类条件概率密度进行估计,利用最大后验理论提出了5种判别模型;其次,提出了四种基于RGB通道差异的火焰检测规则,并利用ROC分析对规则参数进行估计;最后,结合这些模型和规则的检测结果对候选火焰区域进行检测。区域生长以高信度区域作为种子点,与高信度区域相邻的中间信度区域被分类为火焰区域,其他区域被分类为背景区域。实验表明,该方法在各种场景下都能达到理想的火焰区域,具有较高的真阳性率和较低的误检率。
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