There exists an intrinsic relationship between the spectral sensitivity of the Human Visual System (HVS) and colour perception; these intertwined phenomena are often overlooked in perceptual compression research. In general, most previously proposed visually lossless compression techniques exploit luminance (luma) masking including luma spatiotemporal masking, luma contrast masking and luma texture/edge masking. The perceptual relevance of color in a picture is often overlooked, which constitutes a gap in the literature. With regard to the spectral sensitivity phenomenon of the HVS, the color channels of raw RGB 4:4:4 data contain significant color-based psychovisual redundancies. These perceptual redundancies can be quantized via color channel-level perceptual quantization. In this paper, we propose a novel spatiotemporal visually lossless coding method named Spectral Perceptual Quantization (Spectral-PQ). With application for RGB 4:4:4 video data, Spectral-PQ exploits HVS spectral sensitivity-related color masking in addition to spatial masking and temporal masking; the proposed method operates at the Coding Block (CB) level and the Prediction Unit (PU) level in the HEVC standard. Spectral-PQ 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), Spectral-PQ considerably reduces bitrates with a maximum reduction of approximately 81%. The Mean Opinion Score (MOS) in the subjective evaluations show that Spectral-PQ successfully achieves perceptually lossless quality.
翻译:人类视觉系统(HVS)的光谱敏感度与颜色感知之间存在内在关系;这些相互交织的现象往往在视觉压缩研究中被忽视。一般而言,大多数先前提出的目视失色压缩技术都利用光化(Luma)遮罩,包括显微表面表面表面外观遮罩、乳胶对比遮罩和乳头纹理/表面遮罩。图像中的颜色的感知相关性常常被忽视,这在文献中构成了差距。关于HVS的光度敏感度现象,原始 RGB 4:4:4:4数据的颜色频道含有重要的基于肤色的神经视觉冗余变。这些视觉冗余色技术可以通过色色色频道级的光化(Luma)遮掩罩(Lumemoteomode) 面观光色隐隐隐隐隐隐隐性方法(Specialal-dealal dalal dality Q) 和在Sloab CB 的平流压水平上,拟议的压-Clode-Cal-Cal 的平流级平流压水平上,也以显示快速的平流-CLal-de-de-de-dal-de-dealalalalalalal 递减。