期刊文献+

Salient object extraction for user-targeted video content association

Salient object extraction for user-targeted video content association
原文传递
导出
摘要 The increasing amount of videos on the Internet and digital libraries highlights the necessity and importance of interactive video services such as automatically associating additional materials(e.g.,advertising logos and relevant selling information) with the video content so as to enrich the viewing experience.Toward this end,this paper presents a novel approach for user-targeted video content association(VCA) .In this approach,the salient objects are extracted automatically from the video stream using complementary saliency maps.According to these salient objects,the VCA system can push the related logo images to the users.Since the salient objects often correspond to important video content,the associated images can be considered as content-related.Our VCA system also allows users to associate images to the preferred video content through simple interactions by the mouse and an infrared pen.Moreover,by learning the preference of each user through collecting feedbacks on the pulled or pushed images,the VCA system can provide user-targeted services.Experimental results show that our approach can effectively and efficiently extract the salient objects.Moreover,subjective evaluations show that our system can provide content-related and user-targeted VCA services in a less intrusive way. The increasing amount of videos on the Internet and digital libraries highlights the necessity and importance of interactive video services such as automatically associating additional materials(e.g.,advertising logos and relevant selling information) with the video content so as to enrich the viewing experience.Toward this end,this paper presents a novel approach for user-targeted video content association(VCA) .In this approach,the salient objects are extracted automatically from the video stream using complementary saliency maps.According to these salient objects,the VCA system can push the related logo images to the users.Since the salient objects often correspond to important video content,the associated images can be considered as content-related.Our VCA system also allows users to associate images to the preferred video content through simple interactions by the mouse and an infrared pen.Moreover,by learning the preference of each user through collecting feedbacks on the pulled or pushed images,the VCA system can provide user-targeted services.Experimental results show that our approach can effectively and efficiently extract the salient objects.Moreover,subjective evaluations show that our system can provide content-related and user-targeted VCA services in a less intrusive way.
出处 《Journal of Zhejiang University-Science C(Computers and Electronics)》 SCIE EI 2010年第11期850-859,共10页 浙江大学学报C辑(计算机与电子(英文版)
基金 Project supported by the CADAL Project and the National Natural Science Foundation of China(Nos.60973055 and 90820003)
关键词 Salient object extraction User-targeted video content association Complementary saliency maps Salient object extraction, User-targeted video content association, Complementary saliency maps
  • 相关文献

参考文献29

  • 1Achanta, R., Hemami, S., Estrada, F., Susstrunk, S., 2009. Frequency-Tuned Salient Region Detection. IEEE Conf. on Computer Vision and Pattern Recognition, p.1597- 1604. [doi:10.1109/CVPR.2009.5206596].
  • 2Allili, M.S., Ziou, D., 2007. Object of Interest Segmentation and Tracking by Using Feature Selection and Active Contours. IEEE Conf. on Computer Vision and Pattern Recognition, p. 1-8.
  • 3Brasnett, R, Bober, M., 2007. Proposed Improvements to Image Signature XM 31.0. MPEG Doc No. M 14983.
  • 4Chang, C.H., Hsieh, K.Y., Chung, M.C., Wu, J.L., 2008. Visa: Virtual Spotlighted Advertising. Proc. ACM Int. Conf. on Multimedia, p.837-840.
  • 5Elazary, L., Itti, L., 2008. Interesting objects are visually salient. J. Vis., 8(3), Article No. 3. [doi:10.1167/8.3.3].
  • 6Friedland, G., Jantz, K., Rojas, R., 2005. Siox: Simple Interactive Object Extraction in Still Images. 1EEE Int. Syrup. on Multimedia, p.7-14.
  • 7Gao, W., Tian, Y.H., Huang, T.J., Yang, Q., 2010. Vlogging: a survey of video blogging technology on the web. ACM Comput. Surv., 42(4), Article No. 15. [doh10.1145/1749 603. 1749606].
  • 8Guo, J.L., Mei, T., Liu, F.L., Hua, X.S., 2009. Adon: an Intelligent Overlay Video Advertising System. SIGIR, p.628- 629.
  • 9Hou, X.D., Zhang, L.Q., 2007. Saliency Detection: a Spectral Residual Approach. IEEE Conf. on Computer Vision and Pattern Recognition, p. 1-8. [doi:10. 1109/CVPN.2007.363 267].
  • 10Hua, G., Liu, Z.C., Zhang, Z.Y., Wu, Y., 2006. Iterative localglobal energy minimization for automatic extraction of objects of interest. IEEE Trans. Pattern Anal. Mach. intell., 28(10): 1701-1706. [doi:10. 1109/TPAMI.2006.209].

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