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Depth-texture cooperative clustering and alignment for high efficiency depth intra-coding

机译:深度纹理协同聚类和对准高效深度帧内编码

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In view of structure similarity between depth and texture in multiview video plus depth, efficient depth intra-coding with the aid of texture information has received a lot of attention. In this paper, a new depth-texture cooperative clustering method is first proposed for cluster-based depth prediction (CBDP) by exploiting the similarity. Due to inaccuracy of depth maps and the resulted texture-depth misalignment along the edges, a small number of residuals after the depth prediction may be of large values, which will greatly compromise the DCT-based coding performance. Accordingly, a simple yet effective detection and rectification scheme is developed to deal with the misalignment problem. The proposed CBDP followed by the misalignment detection and rectification technique is incorporated into the H.264/AVC intra-coding as an additional option for the coding of depth edge blocks. The new depth coding option is shown to achieve rate reduction, while improving SSIM-based quality of the synthesized views.
机译:鉴于Multiview Video Plus深度的深度和纹理之间的结构相似性,借助纹理信息的高效深度编码已经接受了很多关注。在本文中,首先通过利用相似性来提出新的深度纹理协同聚类方法,用于基于集群的深度预测(CBDP)。由于深度图的不准确性和沿边缘所产生的纹理深度未对准,在深度预测之后的少量残差可能具有大值,这将大大损害基于DCT的编码性能。因此,开发了简单但有效的检测和整流方案来处理未对准问题。所提出的CBDP之后的未对准检测和整流技术被纳入了H.264 / AVC的帧内编码,作为编码深度边缘块的附加选项。显示新的深度编码选项以实现速率降低,同时提高了基于SSIM的合成视图的质量。

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