MMIVMay 16, 2020

Spatiotemporal Adaptive Quantization for the Perceptual Video Coding of RGB 4:4:4 Data

arXiv:2005.07928v11 citations
Originality Incremental advance
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This work addresses video compression inefficiencies for applications requiring high-quality RGB 4:4:4 data, offering a domain-specific improvement.

The paper tackles the problem of inefficient quantization for RGB 4:4:4 video data in HEVC by proposing SPAQ, a spatiotemporal perceptual quantization technique that exploits human visual system sensitivities, resulting in up to 80% bitrate reduction while maintaining perceptually lossless compression.

Due to the spectral sensitivity phenomenon of the Human Visual System (HVS), the color channels of raw RGB 4:4:4 sequences contain significant psychovisual redundancies; these redundancies can be perceptually quantized. The default quantization systems in the HEVC standard are known as Uniform Reconstruction Quantization (URQ) and Rate Distortion Optimized Quantization (RDOQ); URQ and RDOQ are not perceptually optimized for the coding of RGB 4:4:4 video data. In this paper, we propose a novel spatiotemporal perceptual quantization technique named SPAQ. With application for RGB 4:4:4 video data, SPAQ exploits HVS spectral sensitivity-related color masking in addition to spatial masking and temporal masking; SPAQ operates at the Coding Block (CB) level and the Prediction Unit (PU) level. The proposed technique perceptually adjusts the Quantization Step Size (QStep) at the CB level if high variance spatial data in G, B and R CBs is detected and also if high motion vector magnitudes in PUs are detected. Compared with anchor 1 (HEVC HM 16.17 RExt), SPAQ considerably reduces bitrates with a maximum reduction of approximately 80%. The Mean Opinion Score (MOS) in the subjective evaluations, in addition to the SSIM scores, show that SPAQ successfully achieves perceptually lossless compression compared with anchors.

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