计算机科学 ›› 2014, Vol. 41 ›› Issue (12): 251-254.doi: 10.11896/j.issn.1002-137X.2014.12.054
孙建坤,杨若瑜
SUN Jian-kun and YANG Ruo-yu
摘要: 从视频中自动识别烟雾在火灾早期预报警、尾气识别等实际应用中具有重要意义。烟雾检测的难点之一在于如何排除与烟雾颜色相近的运动对象的干扰。为了保证检测效果和实时性,提出使用静态的小波统计特征来排除汽车、行人等干扰区域。该算法首先使用背景剪除法获取运动区域,然后利用颜色直方图映射来提取符合烟雾色彩特征的疑似区,最后分别对背景和相应的视频帧做小波变换并对二者求差,根据差值图像的统计特征来去除疑似区域中的非烟雾物体。实验结果表明,该方法正确率较高,检错率较低,且基本达到实时效果。
[1] Gubbi J,Marusic S,Palaniswami M.Smoke detection in videousing wavelets and support vector machines [J].Fire Safety Journal,2009,44:1110-1115 [2] Yu Chun-yu,Fang Jun,Wang Jin-jun,et al.Video fire smoke detection using motion and color features [J].Fire Technology,2010,46(3):51-663 [3] Chen Thou-ho,Yin Yen-hui,Huang Shi-feng,et al.The smoke detection for early fire-alarming system base on video processing [C]∥International Conference on Intelligent Information Hi-ding and Multimedia Signal Processing,2006(IIH-MSP’06).Dec.2006:427-430 [4] 李文辉,肖林广,王莹,等.一种基于块的视频烟雾检测算法[J].吉林大学学报:理学版,2012,50(5) [5] Yuan Fei-niu.A fast accumulative motion orientation modelbased on integral image for video smoke detection [J].Pattern Recognition Letters,2008,29(7):925-932 [6] Treyin B U,Dedeoglu Y,Cetin A E.Wavelet based real-timesmoke detection in video[C]∥13th European Signal Proces-sing Conference(EUSIPCO 2005).Antalya,Turkey:Curran Associates,2005 [7] Collins R,Lipton A,Kanade T.A system for video surveillance and monitoring [C]∥Proceedings of 8th International Topical Meeting on Robotics and Remote Systems.Pittsburgh,USA:American Nuclear Society,1999:1-15 [8] Liu Yang-yang,Shen Xuan-jing,Wang Yi-qi.Design and implementation of embedded intelligent monitor system based on ARM [J].Journal of Jilin University:Information Science Edition,2011,29(2):158-163 [9] Collins R T,Lipton A J,Kanade T,et al.A system for video surveillance and monitoring[R].CMU-RI-TR-00-12 |
No related articles found! |
|