Spatial Information Refinement for Chroma Intra Prediction in Video Coding
Video compression benefits from advanced chroma intra prediction methods, such as the Cross-Component Linear Model (CCLM) which uses linear models to approximate the relationship between the luma and chroma components. Recently it has been proven that advanced cross-component prediction methods base...
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Zusammenfassung: | Video compression benefits from advanced chroma intra prediction methods,
such as the Cross-Component Linear Model (CCLM) which uses linear models to
approximate the relationship between the luma and chroma components. Recently
it has been proven that advanced cross-component prediction methods based on
Neural Networks (NN) can bring additional coding gains. In this paper, spatial
information refinement is proposed for improving NN-based chroma intra
prediction. Specifically, the performance of chroma intra prediction can be
improved by refined down-sampling or by incorporating location information.
Experimental results show that the two proposed methods obtain 0.31%, 2.64%,
2.02% and 0.33%, 3.00%, 2.12% BD-rate reduction on Y, Cb and Cr components,
respectively, under All-Intra configuration, when implemented in Versatile
Video Coding (H.266/VVC) test model. Index Terms-Chroma intra prediction,
convolutional neural networks, spatial information refinement. |
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DOI: | 10.48550/arxiv.2109.11913 |