Title :
Multiple Hypotheses Bayesian Frame Rate Up-Conversion by Adaptive Fusion of Motion-Compensated Interpolations
Author :
Liu, Hongbin ; Xiong, Ruiqin ; Zhao, Debin ; Ma, Siwei ; Gao, Wen
Author_Institution :
Dept. of Comput. Sci., Harbin Inst. of Technol., Harbin, China
Abstract :
Frame rate up-conversion (FRUC) improves the viewing experience of a video because the motion in a FRUC-constructed high frame-rate video looks more smooth and continuous. This paper proposes a multiple hypotheses Bayesian FRUC scheme for estimating the intermediate frame with maximum a posteriori probability, in which both temporal motion model and spatial image model are incorporated into the optimization criterion. The image model describes the spatial structure of neighboring pixels while the motion model describes the temporal correlation of pixels along motion trajectories. Instead of employing a single uniquely optimal motion, multiple “optimal” motion trajectories are utilized to form a group of motion hypotheses. To obtain accurate estimation for the pixels in missing intermediate frames, the motion-compensated interpolations generated by all these motion hypotheses are adaptively fused according to the reliability of each hypothesis. We revealed by numerical analysis that this reliability (i.e., the variance of interpolation errors along the hypothesized motion trajectory) can be measured by the variation of reference pixels along the motion trajectory. To obtain the multiple motion fields, a set of block-matching sizes is used and the motion fields are estimated by progressively reducing the size of matching block. Experimental results show that the proposed method can significantly improve both the objective and the subjective quality of the constructed high frame rate video.
Keywords :
Bayes methods; interpolation; maximum likelihood estimation; motion compensation; optimisation; reliability; video signal processing; FRUC; block-matching sizes; frame-rate video; hypothesized motion trajectory; intermediate frame estimation; interpolation errors; maximum a posteriori probability; motion hypotheses; motion-compensated interpolation adaptive fusion; multiple hypotheses Bayesian frame rate up-conversion; neighboring pixel spatial structure; numerical analysis; optimal motion trajectories; optimization criterion; pixel temporal correlation; reference pixel variation; reliability; spatial image model; temporal motion model; Bayesian methods; Estimation; Interpolation; Motion estimation; Reliability; Trajectory; Vectors; Bayesian estimation; Huber–Markov random field; frame rate up-conversion; motion estimation; motion-compensated interpolation;
Journal_Title :
Circuits and Systems for Video Technology, IEEE Transactions on
DOI :
10.1109/TCSVT.2012.2197081