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基于视觉双通路与贝叶斯模型的烟雾检测方法
引用本文:石琼豪,马莉,邹绍芳.基于视觉双通路与贝叶斯模型的烟雾检测方法[J].杭州电子科技大学学报,2012,32(5):273-276.
作者姓名:石琼豪  马莉  邹绍芳
作者单位:杭州电子科技大学生命信息与仪器工程学院,浙江杭州,310018
基金项目:国家自然科学基金资助项目(60775016); 浙江省重大科技专项资助项目(C13062)
摘    要:该文提出了开放环境下基于贝叶斯模型与视觉双通路融合的烟雾检测方法.首先利用Itti视觉注意模型自下而上生成灰度显著性图;然后通过被测图像纹理特征直方图与烟雾样本纹理特征直方图的匹配,自上而下获得纹理显著性图;最后根据贝叶斯模型融合灰度与纹理显著性图,生成最终的烟雾概率显著性图.实验结果表明,该文方法能准确提取图像中的疑似烟雾区域,具有抗光照变化的优势,适用于开放环境下的实时烟雾检测.

关 键 词:疑似烟雾区域  视觉双通路  贝叶斯概率融合

A Smoke Detection Algorithm Based on the Theory of Two Visual Pathways and Bayesian Model
SHI Qiong-hao , MA Li , ZOU Shao-fang.A Smoke Detection Algorithm Based on the Theory of Two Visual Pathways and Bayesian Model[J].Journal of Hangzhou Dianzi University,2012,32(5):273-276.
Authors:SHI Qiong-hao  MA Li  ZOU Shao-fang
Affiliation:(School of Life Information and Instrument Engineering,Hangzhou Dianzi University,Hangzhou Zhejiang 310018,China)
Abstract:An algorithm based on the Bayesian model and the theory of visual bi-pathways to detect smoke in an open environment is proposed.Firstly,a gray saliency map is generated on a bottom-up way based on Itti's visual attention model.Secondly,a texture saliency map is generated on a top-down way through matching the texture characteristic histogram of the test picture with that of the smoke samples.At last,a smoke probabilistic saliency map is generated by fusing the mentioned two saliency maps using the Bayesian model.The experimental results show that this algorithm can extract the suspected smoke area accurately in an image and being adapt for the smoke detection in an open environment.
Keywords:suspected smoke area  visual bi-pathways  Bayesian probability
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