烟雾
计算机科学
火灾探测
背景减法
特征提取
人工智能
随机森林
提取器
分割
计算机视觉
模式识别(心理学)
工程类
像素
建筑工程
工艺工程
废物管理
作者
Min Cai,Xiaobo Lu,Xuehui Wu,Yifei Feng
标识
DOI:10.1109/fskd.2016.7603399
摘要
In order to discover forest fire as early as possible, forest fire detection should focus on the smoke in early fire. This paper focuses on three key issues: motion segmentation, feature extraction and classifier design. Background subtraction based on visual background extractor (Vibe) is chosen to divide suspected smoke area when taking into account the accuracy and time consumption. And then do some corresponding morphological processing. Later on, various static and dynamic characteristics of smoke were extracted and different tests were done based on different feature combinations in forest fire smoke detection system. Lots of smoke detecting system only think about static features which will result in a certain degree of misjudgment. Analyzing the false positive rate and recognition rate of these experiments' results, the combination of movement direction, high-frequency energy based on wavelet transformation and compactness is selected to constitute the final recognition vectors. In addition, the continuity which is not mentioned in other researches won't be ignored in this paper. The final experimental results showed that the accuracy rate of this method for smoke detection could reach 92.7%.
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