Ultra High Definition TV (UHDTV) services are being trialled while UHD streaming services have already seen commercial débuts. The amount of data associated with these new services is very high thus extremely efficient video compression tools are required for delivery to the end user. The recently published High Efficiency Video Coding (HEVC) standard promises a new level of compression efficiency, up to 50% better than its predecessor, Advanced Video Coding (AVC). The greater efficiency in HEVC is obtained at much greater computational cost compared to AVC. A practical encoder must optimise the choice of coding tools and devise strategies to reduce the complexity without affecting the compression efficiency. This paper describes the results of a study aimed at optimising HEVC encoding for UHDTV content. The study first reviews the available HEVC coding tools to identify the best configuration before developing three new algorithms to further reduce the computational cost. The proposed optimisations can provide an additional 11.5% encoder speed-up for an average 3.1% bitrate increase on top of the best encoder configuration.
To meet the still growing compression efficiency needs for high definition content, ITU and MPEG are now defining the High Efficiency Video Coding (HEVC) standard. The HEVC codec still relies on a hybrid motion compensated predictive video coding architecture as its H.264/AVC ancestor though novel coding tools are introduced. These novel coding tools provide a highly uncorrelated prediction residue for which classical frequency decomposition methods as the discrete cosine transform may not provide an effective energy compaction. Therefore this paper proposes a transform skip mode which allows skipping one or both directions where the transform is applied. The proposed transform skip mode is integrated in the HEVC codec and is able to provide bitrate reductions of up to 5% at the same objective quality when compared with the HEVC reference codec.
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