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A New Smoke Detection Method of Forest Fire Video with Color and Flutter

机译:彩色和颤振的森林火灾视频烟雾检测新方法

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Big region area, long distance, and fast motion are the main characteristics of smoke video. Traditional smoke video detection has a high false alarm rate. In order to improve the detection accuracy, we propose a novel method to detect smoke video based on color information and flutter analysis. The proposed method can effectively exclude the influence of those objects resembling the smoke motion and reduce false detection rate resulting from illumination change and smoke-color objects. In detail, a background updating model of forest fire smoke video is first built using the Kalman filtering method. Combining updating model with the smoke HSV and RGB color space, candidate smoke video region is segmented. Then, three flutter features, including flutter direction of the video smoke, changing rate of the smoke area, and background ambiguity, are extracted by sliding time window analysis of the candidate smoke. Finally, the characteristic values are used to judge whether it is smoke. Experiment results show that our method can detect the video smoke more accurately as well as faster than the state-of-the-art methods.
机译:大区域,远距离和快速运动是烟雾视频的主要特征。传统的烟雾视频检测具有较高的误报率。为了提高检测精度,我们提出了一种基于颜色信息和抖动分析的烟雾视频检测新方法。所提出的方法可以有效地排除那些类似于烟雾运动的物体的影响,并减少由照明变化和烟雾颜色物体导致的误检率。详细地,首先使用卡尔曼滤波方法建立森林火灾烟雾视频的背景更新模型。结合烟雾HSV和RGB颜色空间的更新模型,分割候选烟雾视频区域。然后,通过对候选烟雾的滑动时间窗口分析,提取出三个颤动特征,包括视频烟雾的颤动方向,烟雾区域的变化率和背景模糊性。最后,将特征值用于判断是否为烟雾。实验结果表明,与最新方法相比,我们的方法可以更准确,更快地检测视频烟雾。

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