期刊文献+

基于背景分类的运动目标检测算法 被引量:6

Moving target detection algorithm based on background classification
下载PDF
导出
摘要 针对光线暗、对比度和分辨率低的监控视频,提出了一种基于背景分类的运动目标检测算法。首先用视频第一帧图像HSV空间的色度H和亮度V作为背景特征进行初始化,建立两种包含色度和亮度特征的背景模型类,即初始化得到的原始背景类和受光照或者其他因素影响得到的在原始背景周围波动的背景波动类,利用这两个背景模型进行前景检测和背景更新。为提高前景检测的准确率,背景模型的更正加入背景更正机制和权重机制,使得背景中样本的数量根据背景的实际情况处在一种动态的变化中,提高前景分割的效率。用不同场景下的监控视频进行算法对比实验,结果证明,该算法获得的前景完整清晰,视频处理的速度较快。提出的算法简单实用,对噪声干扰表现出良好的鲁棒性。 Aiming at surveillance videos which have low light, low contrast and low resolution, this paper proposes a moving target detection algorithm based on background classification. First, the video image hue H and brightness V of HSV in the first frames are used to initialize the background characteristics in order to build two kinds of background model classes including hue and brightness characteristics, namely the original background class that is obtained in the initialization background and the background fluctuating class influenced by lighting or other factors around the original background. These two models are used to detect foreground and to update background model. To improve the accuracy of the foreground detection, the background correction mechanism and weighting mechanism are utilized to correct the background model, so the number of samples in the background changes according to the actual situation in the background in order to improve the efficiency of the foreground segmentation. Experimental results show that the algorithm can obtain complete and clear foreground image and fast processing speed in different scenarios. This algorithm is simple and practical, and has better robustness for noise.
出处 《计算机工程与应用》 CSCD 北大核心 2017年第21期179-184,共6页 Computer Engineering and Applications
基金 国家自然科学基金(No.61303087) 山东省科技发展计划(No.2013 GGX10131) 济南市高校院所自主创新项目(No.201202002)
关键词 背景分类 背景更正机制 权重机制 运动目标检测 background classification background correction mechanism weight mechanism moving target detection
  • 相关文献

参考文献3

二级参考文献27

  • 1Weng S K.Kuo C M,Tu S K.Video object tracking using adaptive Kalmall filter.dournal of visual Communication and Image Representation,2006,17(6):1190-1208
  • 2Chen Y Q,Rui Y,Huang T S.Multicue HMM.UKF for real-time contour tracking.IEEE Transactions on Pattern Analysis and Machine Intelligence,2006,28(9):1525-1529
  • 3Nummiaro K.Meier E K.Gool L J V.An adaptive colorbased particle filter.Image and Vision Computing,2003.21(1):99-110
  • 4Nummiaro K,Meier E K,Cool L J V.Object tracking with an adaptive color-based particle filter.In:Proceedings of the 24th DAGM Symposium on Pattern Recognition.London,UK:Springer.2002.353-360
  • 5Comaniciu D,Ramesh V.Mead:l skift and optimal prediction for efficient obiect tracking.In:Proceedings of IEEE International Conference on Image Processing.Vancouver,Canada:IEEE,2000.70-73
  • 6Comaniciu D.Meer P.Mean shift:a robust approach toward feature space analysis.IEEE Transactions on Pattern Analysis and Machine Intelligence,2002,24(5):603-619
  • 7Comaniciu D,Ramesh V,Meer P.Kernel-based object tracking.IEEE Transactions on Pattern Analysis and Machine Intelligence,2003,25(5):564-577
  • 8Porikl F.Tuzel O.Meer P.Covariance tracking using model update based on Lie algebra.In:Proceedings of IEEE Computer Society Conference on Computer Vision and Pattern Recognition.New York,USA:IEEE,2006.728-735
  • 9Collins R T,Liu Y X.Leordeanu M.Online selection of discriminative tracking features.IEEE Transactions on Pattern Analysis and Machine Intellgence,2005,27(10):1631-1643
  • 10Nguyen H T,Worring M,van den Boomgaard R.Ocelusion robust adaptive template tracking.In:Proceedings of the 8th International Conference 0n Computer Vision.Vancouver,Canada:IEEE,2001.678-683

共引文献61

同被引文献58

引证文献6

二级引证文献127

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部