屏幕内容残差编码概率分布的优化

Hannah Och, T. Strutz, A. Kaup
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引用次数: 2

摘要

概率分布建模是屏幕内容无损编码最具竞争力的方法的基础。其中一种最先进的方法被称为软上下文形成(SCF)。对于要编码的每个像素,基于相邻模式和该模式在已经编码的图像中的出现情况估计概率分布。因此,使用算术编码器,可以非常有效地对像素颜色进行编码,前提是当前颜色之前已经与类似的图案相关联地观察过。如果不是这种情况,则使用调色板对颜色进行编码,或者如果仍然未知,则通过剩余编码进行编码。基于调色板的编码和残差编码的压缩效率都明显低于基于软上下文形成的编码。本文通过自适应调整残差的概率分布,改进了残差编码阶段。在此基础上,提出了一种基于邻域中新颜色出现的概率模型。这些修改导致比特率平均降低高达2.9%。与HEVC (HM-16.21 + SCM-8.8)和FLIF相比,改进的SCF方法平均分别节省了11%和18%的成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization of Probability Distributions for Residual Coding of Screen Content
Probability distribution modeling is the basis for most competitive methods for lossless coding of screen content. One such state-of-the-art method is known as soft context formation (SCF). For each pixel to be encoded, a probability distribution is estimated based on the neighboring pattern and the occurrence of that pattern in the already encoded image. Using an arithmetic coder, the pixel color can thus be encoded very efficiently, provided that the current color has been observed before in association with a similar pattern. If this is not the case, the color is instead encoded using a color palette or, if it is still unknown, via residual coding. Both palette-based coding and residual coding have significantly worse compression efficiency than coding based on soft context formation. In this paper, the residual coding stage is improved by adaptively trimming the probability distributions for the residual error. Furthermore, an enhanced probability modeling for indicating a new color depending on the occurrence of new colors in the neighborhood is proposed. These modifications result in a bitrate reduction of up to 2.9 % on average. Compared to HEVC (HM-16.21 + SCM-8.8) and FLIF, the improved SCF method saves on average about 11 % and 18 % rate, respectively.
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