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Low complexity depth intra coding in 3D-HEVC based on depth classification

机译:基于深度分类的3D-HEVC低复杂度深度帧内编码

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The latest high efficiency video coding-based three dimensional video coding (3D-HEVC) exploits sophisticated intra prediction scheme to improve the coding performance of the depth video, but incurring heavy computational complexity. To address this problem, a low complexity depth intra coding method is presented for 3D-HEVC based on depth classification. Firstly, a database of depth prediction units (PUs) with three kinds of complexities is collected based on their optimal intra prediction mode. Then, the histogram of oriented gradient (HOG) features are extracted on these established database to train the classifier using support vector machine (SVM). For the current depth PU, the trained classifier is applied to determine its most possible complexity class so as to select the corresponding modes for involving the mode decision process. Experimental results show that the proposed method is able to significantly reduce the computational complexity while keeping almost the same coding performance of depth video and video quality of the synthesized view, compared with the exhaustive mode decision in 3D-HEVC.
机译:最新的基于高效视频编码的三维视频编码(3D-HEVC)利用复杂的帧内预测方案来提高深度视频的编码性能,但会带来大量的计算复杂性。为了解决这个问题,提出了一种基于深度分类的用于3D-HEVC的低复杂度深度帧内编码方法。首先,基于三种复杂度的深度预测单元(PU)的最佳帧内预测模式,收集数据库。然后,在这些已建立的数据库上提取定向梯度(HOG)特征的直方图,以使用支持向量机(SVM)训练分类器。对于当前深度PU,训练有素的分类器被应用于确定其最可能的复杂度类别,以便选择相应的模式以用于涉及模式决定过程。实验结果表明,与3D-HEVC中的穷举模式决策相比,该方法能够显着降低计算复杂度,同时保持深度视频的编码性能和合成视图的视频质量几乎相同。

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