A NOVEL MODE SELECTION-BASED FAST INTRA PREDICTION ALGORITHM FOR SPATIAL SHVC
Dayong Wang (Institute of Bioinformatics, Chongqing University of Posts & Telecommunications, Chongqing, China); Yu Sun (University of Central Arkansas); Weisheng Li (Chongqing University of Posts and Telecommunications); Lele Xie (Chongqing University of Posts & Telecommunications); Xin Lu (De Montfort University ); Frederic Dufaux (CNRS); Ce Zhu (University of Electronic Science & Technology of China)
-
SPS
IEEE Members: $11.00
Non-members: $15.00
Due to multi-layer encoding and Inter-layer prediction, Spatial
Scalable High-Efficiency Video Coding (SSHVC) has
extremely high coding complexity. It is very crucial to improve
its coding speed so as to promote widespread and
cost-effective SSHVC applications. In this paper, we have
proposed a novel Mode Selection-Based Fast Intra Prediction
algorithm for SSHVC. We reveal the RD costs of Inter-layer
Reference (ILR) mode and Intra mode have a significant difference,
and the RD costs of these two modes follow Gaussian
distribution. Based on this observation, we propose to apply
the classic Gaussian Mixture Model and Expectation Maximization
in machine learning to determine whether ILR is the
best mode so as to skip the Intra mode. Experimental results
demonstrate that the proposed algorithm can significantly
improve the coding speed with negligible coding efficiency
loss.