Litcius/Paper detail

Joint Decision Tree and Visual Feature Rate Control Optimization for VVC UHD Coding

Mingliang Zhou, Xuekai Wei, Weijia Jia, Sam Kwong

2022IEEE Transactions on Image Processing33 citationsDOI

Abstract

In this paper, a joint decision tree and visual feature optimization rate control scheme for ultrahigh-definition (UHD) versatile video coding (VVC) is proposed. First, we design a new rate-distortion (R-D) model for UHD videos, and we establish a decision-tree-based multiclass classification scheme to improve the prediction accuracy of the R-D model by fully considering visual features. Second, based on the proposed R-D model, the globally optimal solution is obtained through convex optimization. Finally, we embed our algorithm into the latest VVC reference software, VTM 10.2. According to our experimental results, compared with the latest algorithm in VTM 10.2 and other state-of-the-art algorithms, our method can achieve significant bit rate reductions while maintaining a given peak signal-to-noise ratio (PSNR) or structural similarity index measure (SSIM).

Topics & Concepts

Computer scienceCoding (social sciences)Artificial intelligenceRate–distortion optimizationTree (set theory)Decision treePattern recognition (psychology)Peak signal-to-noise ratioFeature (linguistics)AlgorithmMathematicsImage (mathematics)Multiview Video CodingStatisticsLinguisticsMathematical analysisVideo trackingPhilosophyObject (grammar)Video Coding and Compression TechnologiesImage and Video Quality AssessmentAdvanced Data Compression Techniques
Joint Decision Tree and Visual Feature Rate Control Optimization for VVC UHD Coding | Litcius