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A perceptual rate-distortion optimization approach based on piecewise linear approximation for video coding

机译:基于分段线性逼近的视频编码感知率失真优化方法

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The core question in Perceptual Rate Distortion Optimization is how to find the Lagrange multiplier λ, which essentially requires the construction of a perceptual quality based RD model. A compelling RD modeling expects that the model reflects the best achievable Rate Distortion trade-off and captures the RD behavior with high accuracy. To this end, we rescale the λ associated with MSE-RDO to match the dynamic range of the perceptual distortion and populate a family of RD samples from Perceptual-RDO with its Lagrange multiplier as offsetting the rescaled λ. Considering that the envelope curve that encloses all the RD samples depicts the best achievable RD bound, we propose a piecewise linear approximation approach (since there is no guarantee that the RD model can be accurately fitted by a single function e.g. D = aebR, D = aRb) to represent it. Each segment in the piecewise line is obtained with fair computational complexity: fitting the RD samples given the same QP with circle curve and finding the common tangent line over two adjacent circle curves. Experiments show that our proposed approach can reduce bitrate by 2–5% given the same perceptual distortion than the conventional approach.
机译:感知速率失真优化中的核心问题是如何找到拉格朗日乘数λ,这本质上需要构建基于感知质量的RD模型。引人注目的RD建模期望该模型反映出最佳可实现的“速率失真”折衷,并以高精度捕获RD行为。为此,我们重新缩放与MSE-RDO相关联的λ,以匹配感知失真的动态范围,并使用其Lagrange乘数填充来自感知RDO的RD样本族,以抵消重新缩放的λ。考虑到包围所有RD样本的包络曲线描述了可实现的最佳RD边界,我们提出了一种分段线性逼近方法(因为不能保证可以通过单个函数精确拟合RD模型,例如D = ae bR ,D = aR b )来表示它。分段线中的每个线段都具有相当大的计算复杂度:将具有相同QP的RD样本与圆曲线拟合,并在两条相邻的圆曲线上找到公共切线。实验表明,在与传统方法相同的感知失真的情况下,我们提出的方法可以将比特率降低2–5%。

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