Research on flame detection algorithm based on multi - feature fusion

Xipeng Wang, Yong Li, Zhi Li
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引用次数: 8

Abstract

Fast and accurate detection of the flame area in the surveillance video is a necessary condition to reduce the loss caused by fire. This paper combines the dynamic and static features of the flame in the video, and proposes a flame detection method combining the flame color feature and the local feature. Firstly, moving target detection method is used to extract the moving target from video streams, and the effective color segmentation threshold is analyzed and determined. The color threshold is segmented from the two color spaces of RGB and HSV respectively to obtain the suspected flame region. The local features of the target area are extracted, and the feature vector input into the Support Vector Machine classifier for flame detection. The detection effects of the two local features were compared to select the better features. The experiment result shows that the algorithm of this paper achieves the ideal detection effect. Compared with the traditional single feature flame detection method, the algorithm of this paper effectively reduces the impact of the environment on the detection results and reduces the false alarm rate of the fire flame.
基于多特征融合的火焰检测算法研究
在监控视频中快速准确地检测火焰区域是减少火灾损失的必要条件。本文结合视频中火焰的动态和静态特征,提出了一种结合火焰颜色特征和局部特征的火焰检测方法。首先,采用运动目标检测方法从视频流中提取运动目标,分析确定有效的颜色分割阈值;分别从RGB和HSV两个颜色空间分割颜色阈值,得到疑似火焰区域。提取目标区域的局部特征,并将特征向量输入到支持向量机分类器中进行火焰检测。比较两种局部特征的检测效果,选择较好的特征。实验结果表明,本文算法达到了理想的检测效果。与传统的单特征火焰检测方法相比,本文算法有效降低了环境对检测结果的影响,降低了火灾火焰的虚警率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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