Automated content restoration system for file-based broadcasting environments

被引:0
作者
Technical Research Institute of Korean Broadcasting System, Korea, Republic of [1 ]
不详 [2 ]
不详 [3 ]
不详 [4 ]
不详 [5 ]
不详 [6 ]
机构
[1] Kyung Hee University, Yongin-si, Gyeonggido
[2] Inha University, Incheon
来源
SMPTE Motion Imaging J. | / 8卷 / 39-46期
关键词
Compendex;
D O I
10.5594/j18639
中图分类号
学科分类号
摘要
The quality of digital content has become increasingly significant in digital broadcasting systems. These days, consumers react to even subtle defects in media content, which, in turn, influence consumer satisfaction about the content. The development of digital broadcasting technology has replaced tape-based content with file-based content. Nonetheless, in the process of generating file-based content, people are often confronted with different types of errors. Detecting such errors and fixing them require a substantial amount of time and human labor, whereas being unable to fix them might lead to broadcast failure. Therefore, in this paper, we introduce an automated restoration system that reduces intensive human labor in fixing errors in the content generating process. Our automated video restoration system can be applied to different types of classic errors. We developed several customized algorithms to restore each error in the digital content derived from the Korean Broadcasting System video archives. Implementing our method as a familiar tool for content producers is also a consideration. We are developing the restoration system as a plug-in to a well-known nonlinear editing system. © Copyright 2014 IBC.
引用
收藏
页码:39 / 46
页数:7
相关论文
共 11 条
[1]  
Lee M., Et al., Automated content quality check system for tapeless broadcasting environments, International Broadcasting Convention, (2010)
[2]  
Blancoi Ribera R., Choi S., Kim Y., Lee J., Noh J., Video panorama for 2D to 3D conversion, Computer Graphics Forum, 31, 7, pp. 2213-2222, (2012)
[3]  
Sun D., Roth S., Black M.J., Secrets of optical flow estimation and their principles, Proc. IEEE Computer Vision and Pattern Recognition, (2010)
[4]  
Zhai J., Yu K., Li J., Li S., A low complexity motion compensated frame interpolation method, Proc. IEEE International Symposium on Circuits and Systems, (2005)
[5]  
Levin A., Lischinski D., Weiss Y., Colorization Using Optimization, (2004)
[6]  
Wexler Y., Shechtman E., Irani M., Space-time completion of video, IEEE Pattern Analysis and Machine Intelligence, 29, 3, pp. 463-476, (2007)
[7]  
Vander Haeghen Y., Naeyaert J.M., Lemahieu I., Philips W., An imaging system with calibrated color image acquisition for use in dermatology, IEEE Trans. Med. Imag., 19, 7, pp. 722-730, (2000)
[8]  
Chambah M., Rizzi A., Gatta C., Besserer B., Marini D., Perceptual approach for unsupervised digital color restoration of cinematographic archives, Proc. SPIE IS&T Electr. Imag., 5008, (2003)
[9]  
Kyung W., Kim K., Kim D., Ha Y., Color correction for faded image using classification in LCybCrg color space, Proc. IEEE International Conference on Consumer Electronics, (2011)
[10]  
Gao C., Panetta K.A., Agaian S.S., A new color contrast enhancement algorithm for robotic applications, Proc. IEEE Technologies for Practical Robot Applications, (2012)