基于图像的动态特征人工神经网络森林火灾检测

Dengyi Zhang, Shizhong Han, Jianhui Zhao, Zhong Zhang, Chengzhang Qu, Youwang Ke, Xiang Chen
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引用次数: 51

摘要

本文提出了一种基于视频图像分割火区动态特征的人工神经网络实时森林火灾检测算法。利用HSV色彩空间的阈值从图像中获得火焰区域。从每5个连续帧中计算5个区域的面积、圆度和轮廓。将它们的平均值和均方差作为动态特性,作为人工神经网络的输入。经过训练的BP网络可以帮助识别森林火灾,甚至可以将其与移动的汽车或飘扬的红色旗帜区分开来。实验结果证明了该方法在森林火灾监测中的应用价值。
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Image Based Forest Fire Detection Using Dynamic Characteristics with Artificial Neural Networks
In this paper, we propose a real-time forest fire detection algorithm using artificial neural networks based on dynamic characteristics of fire regions segmented from video images. Fire region is obtained from image with the help of threshold values in HSV color space. Area, roundness and contour are computed for fire regions from each 5 continuous frames. The average and mean square deviation of them are used as dynamic characteristics, and taken as input of the artificial neural network. The trained BP network can help identify forest fire, even distinguish it from moving car or flying flag with red color. Experimental results of our method prove its value in forest fire surveillance.
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