Title
Video object inpainting using manifold-based action prediction
Abstract
This paper presents a novel scheme for object completion in a video. The framework includes three steps: posture synthesis, graphical model construction, and action prediction. In the very beginning, a posture synthesis method is adopted to enrich the number of postures. Then, all postures are used to build a graphical model of object action which can provide possible motion tendency. We define two constraints to confine the motion continuity property. With the two constraints, possible candidates between every two consecutive postures are significantly reduced. Finally, we apply the Markov Random Field model to perform global matching. The proposed approach can effectively maintain the temporal continuity of the reconstructed motion. The advantage of this action prediction strategy is that it can handle the cases such as non-periodic motion or complete occlusion.
Year
DOI
Venue
2010
10.1109/ICIP.2010.5648911
ICIP
Keywords
Field
DocType
video inpainting,video signal processing,video object inpainting,motion continuity,markov random field model,action prediction,synthetic posture,computer graphics,motion animation,graphical model construction,global matching,posture synthesis,manifold-based action prediction,object completion,graphical models,databases,trajectory,manifolds,shape,graphical model
Global matching,Computer vision,Temporal continuity,Pattern recognition,Markov random field,Computer science,Inpainting,Artificial intelligence,Graphical model,Computer graphics,Trajectory,Manifold
Conference
ISSN
ISBN
Citations 
1522-4880 E-ISBN : 978-1-4244-7993-1
978-1-4244-7993-1
1
PageRank 
References 
Authors
0.36
7
5
Name
Order
Citations
PageRank
Chih-Hung Ling1232.23
Yu-Ming Liang29510.83
Chia-Wen Lin31639120.23
Yong-Sheng Chen431430.12
h y m liao52353198.72