Discontinuity-aware video object cutout
Fan Zhong, Xueying Qin, Qunsheng Peng, Xiangxu Meng
In ACM Transactions on Graphics, 31(6), November 2012.
Abstract: Existing video object cutout systems can only deal with limited cases. They usually require detailed user interactions to segment real-life videos, which often suffer from both inseparable statistics (similar appearance between foreground and background) and temporal discontinuities (e.g. large movements, newly-exposed regions following disocclusion or topology change). In this paper, we present an efficient video cutout system to meet this challenge. A novel directional classifier is proposed to handle temporal discontinuities robustly, and then multiple classifiers are incorporated to cover a variety of cases. The outputs of these classifiers are integrated via another classifier, which is learnt from real examples. The foreground matte is solved by a coherent matting procedure, and remaining errors can be removed easily by additive spatio-temporal local editing. Experiments demonstrate that our system performs more robustly and more intelligently than existing systems in dealing with various input types, thus saving a lot of user labor and time.
@article{Zhong:2012:DVO,
author = {Fan Zhong and Xueying Qin and Qunsheng Peng and Xiangxu Meng},
title = {Discontinuity-aware video object cutout},
journal = {ACM Transactions on Graphics},
volume = {31},
number = {6},
pages = {175:1--175:10},
month = nov,
year = {2012},
}
Return to the search page.
graphbib: Powered by "bibsql" and "SQLite3."