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Structural similarity-based synthesized view distortion estimation for depth map coding

机译:基于结构相似度的深度图编码综合视图失真估计

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摘要

Depth map coding aims to maximize the perceived visual quality of the synthesized virtual views instead of the depth maps. Therefore, it is necessary to develop new synthesized view distortion model to capture the effect of depth map distortion on the final quality of the synthesized views. This paper proposes a structural similaritybased synthesized view distortion (SS-SVD) model to relate perceptual distortion in coded depth map and synthesized view by deriving the relationship between the depth map distortion, warping error and synthesized view distortion. The SS-SVD model is applied to the rate distortion optimization which describes the relationship between depth coding bitrate and synthesized view distortion for depth map coding mode selection. Experimental results show that the proposed SS-SVD method obtains both better rate distortion performance and perceptual quality of synthesized views than JM reference software.
机译:深度图编码旨在最大化合成虚拟视图而不是深度图的感知视觉质量。因此,有必要开发新的合成视图失真模型以捕获深度图失真对合成视图最终质量的影响。本文提出了一种基于结构相似度的合成视图失真模型,通过推导深度图失真,翘曲误差和合成视图失真之间的关系,将编码后的深度图和合成视图中的感知失真联系起来。 SS-SVD模型应用于速率失真优化,该速率失真优化描述了深度编码比特率和用于深度图编码模式选择的合成视图失真之间的关系。实验结果表明,与JM参考软件相比,提出的SS-SVD方法获得了更好的速率失真性能和综合视图的感知质量。

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