Depth map coding by dense disparity estimation for MVD compression

Marco Cagnazzo, B. Pesquet-Popescu
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引用次数: 2

Abstract

In multiview video representation, one of the most popular format is the so-called multiple view video plus depth. This representation is made up of N image sequences, each accompanied by a sequence of depth maps, telling the distance of each represented pixel from the observing camera. The depth maps are needed at the decoder side in order to generate intermediate views and therefore to enrich the user experience. This format is very flexible but also very demanding, in terms of storage space or and transmission bandwidth. Therefore, compression is needed. At this end, one of the key steps is an efficient representation of depth maps. In this work we build over a proposed method for multiple view video coding, based on dense disparity estimation between views. This allows us to obtain a compact and high-quality depthmap representation. In particular we explore the complex relationship between estimation and encoding parameters, showing that an optimal parameter set exist, that allows a fine-tuning of the estimation phase and an adaption of its results to the subsequent compression phase. Experiments are encouraging, showing remarkable gain over simple methods such as H.264/AVC simulcast, and even some gain with respect to more sophisticated techniques such as MVC.
基于密集视差估计的MVD压缩深度图编码
在多视点视频表示中,最流行的一种格式是所谓的多视点视频加深度。这种表示由N个图像序列组成,每个图像序列都伴随着一系列深度图,告诉每个表示像素与观察相机的距离。在解码器端需要深度图,以便生成中间视图,从而丰富用户体验。这种格式非常灵活,但在存储空间和传输带宽方面要求也非常高。因此,需要压缩。最后,关键步骤之一是深度图的有效表示。在这项工作中,我们建立了一种基于视图之间密集视差估计的多视图视频编码方法。这使我们能够获得紧凑和高质量的深度图表示。我们特别探讨了估计和编码参数之间的复杂关系,表明存在一个最优参数集,它允许对估计阶段进行微调,并将其结果适应于随后的压缩阶段。实验结果令人鼓舞,与H.264/AVC联播等简单方法相比,显示出显著的增益,甚至与MVC等更复杂的技术相比,也有一些增益。
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