一种基于视频处理的智能实时火灾探测方法

Thou-Ho Chen, Cheng-Liang Kao, S. Chang
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引用次数: 118

摘要

为实现火灾的全自动监控,提出了一种基于视频处理两阶段决策策略的火灾智能实时探测方法。第一个决策阶段是通过从视觉图像中提取火像素来检查是否存在火灾。在彩色图像处理中,RGB(红、绿、蓝)颜色模型的计算复杂度低于其他颜色模型,因此采用RGB模型来描述5个像素点。根据R分量的饱和度和火的动态特征,推导出火像元的判定函数。在第二个决策阶段,如果提取的火灾像素随着燃烧时间的增加而增加,并且在一段时间间隔内大于某一阈值,则会发出火灾警报,以避免导致灾难。为了降低误报率,采用自适应阈值法多次重复二次决策过程。实验结果表明,该方法在重要的军事、社会保障、森林火灾报警、商业应用等方面具有很大的吸引力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An intelligent real-time fire-detection method based on video processing
To achieve fully automatic surveillance of fires, an intelligent real-time fire detection method based on a 2-stage decision strategy of video processing is proposed. The first decision stage is to check if there is a existing fire by extracting fire-pixels from visual images. In color image processing, the RGB (red, green, blue) color model has less computational complexity than other color models and hence is adopted to describe fire pixels. The decision function of fire-pixels can be deduced by the saturation of R component and fire's dynamic features. In the second decision stage, if the number of extracted fire pixels is increasing with burning time and greater than someone threshold during a time interval, a fire alarm is given to avoid leading to a disaster. To reduce false-alarm rate, the second decision process is repeated with several times at an adaptive thresholding way. Experimental results demonstrate that the proposed method is very attractive for the important military, social security, forest-fire alarm, commercial applications, and so on.
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