MRF-based planar co-segmentation for depth compression

B. Özkalayci, Aydin Alatan
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引用次数: 1

Abstract

An energy based planar depth representation is proposed to obtain an efficient depth compression tool for 3DV applications. The proposed segmentation-based depth compression approach is designed by reflecting the rate-distortion tradeoff into the energy terms. A PEARL based algorithm is developed to obtain the planar approximations of depth images. Lastly depth reconstruction and novel view rendering results of the proposal compared with the state-of-the-art methods. The experiments show that the planar approach performs superior rendering results than JPEG 2000 and HEVC standards.
基于mrf的深度压缩平面共分割
提出了一种基于能量的平面深度表示法,以获得一种高效的三维dv深度压缩工具。所提出的基于分割的深度压缩方法是通过将率失真权衡反映到能量项中来设计的。提出了一种基于PEARL的深度图像平面逼近算法。最后,将所提方法与现有方法进行了深度重建和新颖视图渲染效果的比较。实验表明,该方法的渲染效果优于JPEG 2000和HEVC标准。
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