期刊文献+

H.264压缩域中mean-shift聚类运动目标分割算法 被引量:8

An algorithm of mean-shift clustering-based moving object segmentation in H.264 compression domain
原文传递
导出
摘要 针对视频监控、检索,提出了一种在H.264压缩域下运动对象分割的新算法。根据实际监控应用特点,算法主要利用H.264码流中提取的运动矢量(MV)、分块尺寸信息对原始的MV场(MVF)进行可靠性分析以及空间滤波、mean-shift聚类处理,从而得到可信度较高的MVF场。首先,从H.264码流中获取原始MV并进行归一化处理,同时对原始MVF进行两步空间滤波;其次,对不同的块大小分配相应的权值作为每个样本的权重系数,将处理之后的MVF作为样本空间,利用mean-shift聚类获取真实的MVF;最后,根据可靠的MVF标记运动目标。实验结果表明,本文提出的mean-shift聚类运动目标分割算法可以获得有效并可靠的分割结果。 Video segmentation has played a critical role in most video processing fields.A new algorithm of moving object segmentation in the H.264compression domain for video surveillance and retrieva l is proposed.According to the practical application characteristics,this algorithm mainly utilizes motion vectors and partitioned bl ock size information that are directly extracted for H.264bit streams to analyze the reliability of original motion vector field (MVF),and p rocesses the MVF using spatial filter and mean-shift clustering,thus gets reliable MVF.First,the original motion vectors are obt ained from the H.264stream and normalized after two steps of spatial filter.Then,appropriate weight is assigned for partitioned block size as the weight coefficient of each sample and then the processed MVF is used as the sample space for mean-shift clustering algorit hm to obtain the real MVF.Finally,the moving target will be segmented from the background according to the marked reliable motion vectors.T he experimental results demonstrate that the proposed mean-shift clustering-based moving object segmentation algorithm coul d achieve good performance and efficiency.
出处 《光电子.激光》 EI CAS CSCD 北大核心 2013年第11期2205-2211,共7页 Journal of Optoelectronics·Laser
基金 国家"863"高技术研究发展计划(2008AA121803) 国家"973"重点基础发展规划(2009CB72400603B)资助项目
关键词 视频监控 运动对象分割 H 264 mean-shift聚类 video surveillance moving object segmentation H. 264 mean-shift clustering
  • 相关文献

参考文献15

  • 1ZHANG Xiao-bo, LlU Wen-yao, LV Da-wei. Automatic vid- eo object segmentation algorithm based on spatio-tempo- ral information [J]. Journal of Optoelectronics : Laser, 2009,20(12) : 1641-1645.
  • 2Luciano S Silva, Jacob Scharcanski. Video segmeantation based on motion coherence of particles in a video se- quence[J]. IEEE Transaction on Image Processing, 2010, 19(4) :1036-1048.
  • 3WANG Ting-huai. Probabilistic motion diffusion of labeling priors for coherent video segmentation[J] IEEE Transac- tion on Multimedia, 2012,14(2) .. 389-400.
  • 4徐少平,刘小平,李春泉,胡凌燕,杨晓辉.基于区域最大相似度的快速图像分割算法[J].光电子.激光,2013,24(5):990-998. 被引量:20
  • 5徐海霞,温显斌,邹永廖,郑永春.基于Contourlet域图谱聚类和多尺度Markov模型的多光谱遥感图像分割[J].光电子.激光,2013,24(5):999-1005. 被引量:5
  • 6Porikli F, Bashir F, Sun H. Compressed domain video ob- ject segmentation[J]. IEEE Transaction on Circuits andSystems for Video Technology, 2010,20(1) : 2-14.
  • 7Chert Y M,Bajic I V,Saeedi P. Moving region segmenta- tion from compressed video using global motion estima- tion and Markov radom fields [J]. IEEE Transaction on multimedia, 2011,13(3) :421-431.
  • 8冯杰,蒋荣欣,陈耀武.一种新的基于H.264压缩域的运动对象分割算法[J].光电子.激光,2009,20(12):1641-1645. 被引量:2
  • 9Poppe C,Bruyne S D, Paridaens T. Moving object detec- tion in the H. 264/AV0 compressed domain for video sur- veillance applications[J]. J. Vis. Commun. Image R, 2009,20:428-437.
  • 10ITU-T/ISO/IEC Joint Video Team. Advanced video coding for generic audiovisual services(H. 264, ISO/IEC 14496- 10 AVC) [S]. ITU-T and ISO/IEC, 2003.

二级参考文献45

  • 1LI XiaoBin,TIAN Zheng.Multiscale stochastic hierarchical image segmentation by spectral clustering[J].Science in China(Series F),2007,50(2):198-211. 被引量:14
  • 2Babu R V,Ramakrishnan K R,Srinivasan S H. Video object segmentation:a compressed domain approach[J]. IEEE Transactions on Circuits and Systems for Video Techology. 2004,14(4) :462-474.
  • 3Yu X,Duan L,Tian Q. Robust moving video object segrnentationin the MPEG compressed domain[A], Proceedings. International Confrence on Image Processing[C]. 2003,2:111-933-6.
  • 4Zeng W, Gao W, Zhao D. Automatic moving object extraction in MPEG video[A]. Proceedings of the International Symposium on Circuits and Systerns[C]. 2003,2: 524-527.
  • 5Wang J,Patel N,Grosky W. Moving camera moving object segmentation in an MPEG-2 compressed video sequence[C]. SPIE,Multimedia Content Analysis, Management, and Retrieval, 2006, 607312-1- 607312-8,6073.
  • 6Wiegand T,Sullivan G J,Bjentegaard G, et al. Overview of the H. 264/AVC video coding standard[J]. IEEE Transactions on Circuits and Systems for Video Technology. 2003, 13(7) :560-576.
  • 7Zeng W, Du J, Gao W,et al. Robust moving object segmentation on H. 264/AVC compressed video using the block-based MRF model [J]. Real-Time Imaging. 2005,11 (4) :290-299.
  • 8Liu Z, Zhang Z, Shen L. Moving object segmentation in the H. 264 compressed domain[J].Optical Engineering. 2007,46(1) :017003.
  • 9Liu Z,Lu Y,Zhang Z. Real-time spatiotemporal segmentation of video objects in the H. 264 compressed domain[J]. Journal of Visual Communication and Image Representation. 2007,18(3):275-290.
  • 10Liu Z,Gu J,Shen L,et al. Efficient video object segmentation based on Gaussian mixture model and Markov random field[A].9th international Conference on Signal Processing[C]. 2008 ,1006-1009.

共引文献24

同被引文献82

  • 1闫钧华,陈少华,艾淑芳,李大雷,段贺.基于Kalman预测器的改进的CAMShift目标跟踪[J].中国惯性技术学报,2014,12(4):536-542. 被引量:30
  • 2侯忠生.无模型自适应控制的现状与展望[J].控制理论与应用,2006,23(4):586-592. 被引量:139
  • 3Marpe D, Wiegand T, Gordon S. H. 264/MPEG4-AVC fi- delity range extensions: tools, profiles, performance, and application areas [A]. Proc. of 2005 IEEE International Conference on Image Processing (ICIP2005) [C]. 2005, 593-596.
  • 4Son Chang-Hoon, Kim Ji-Won, Song Sung-Gun, et al. Low complexity embedded compression algorithm for reduc- tion of memory size and bandwidth requirements in the JPEG2000 encoder[J]. IEEE Transaction on computer e- lectronics, 2010,56 (4) : 2421-2429.
  • 5WANG Jhing-fa,WANG Jia-ching, CHEN Jang-Ting, et al. A novel fast algorithm for Intra mode decision in H. 264/ AVC encoders[A]. Proc. of international Symposium on Circuits and System (ISCAS) [C]. 2006,3498-3501.
  • 6Chiang Chen-Kuo, Pan Wei-Hua, Hwang Chiuan, et al. Fast H. 264 encoding based on statistical learning[J]. IEEE. Trans. On Circuits and Systems for Video Technolo- gy,2011,21(9) :1304-1315.
  • 7Thomas Wiegand, Gary J Sullivan, Gisle Bj ntegaard, et al. Overview of the H. 264/AVC video coding standard [J]. IEEE. Trans. Circuits Syst. Video Technol., 2003,13 (7) :560-576.
  • 8Hamdy A S,Ibrahim B M E A,Abflelhafim C M B. Efficient H. 264 intra prediction scheme based on best prediction matrix model[A]. Proc. of 2013 International Conference on Electronics, Computer and Computation (IOECOO) [C]. 2013,363-367.
  • 9Rhee C E,Kim T S,Lee H J. An H. 264 high-profile intra- prediction with adaptive selection between the parallel and pipelined executions of prediction modes[J]. IEEE Transactions on Multimedia,2012,16(4):947-959.
  • 10Kwon Soon-kak, Punchihewa Amal, Bailey Donald G, et al. Adaptive simplification of prediction modes for H. 264 intra-picture coding[J]. IEEE Transactions on broadcast- ing, 2012,58S( 1 ) : 125-130.

引证文献8

二级引证文献29

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