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Fast Intermode Decision Via Statistical Learning for H.264 Video Coding

机译:通过统计学习对H.264视频编码进行快速联模决策

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Although the variable-block-size motion compensation scheme significantly reduces the compensation error, the computational complexity of motion estimation (ME) is tremendously increased at the same time. To reduce the complexity of the variable-block-size ME algorithm, we propose a statistical learning approach to simplify the computation involved in the sub-MB mode selection. Some representative features are extracted during ME with fixed sizes. Then, an off-line pre-classification approach is used to predict the most probable sub-MB modes according to the run-time features. It turns out that only possible sub-MB modes need to perform ME. Experimental results show that the computation complexity is significantly reduced while the video quality degradation and bitrate increment is negligible.
机译:尽管可变块大小的运动补偿方案显着减小了补偿误差,但同时运动估计(ME)的计算复杂度却大大增加。为了降低可变块大小ME算法的复杂性,我们提出了一种统计学习方法来简化sub-MB模式选择中涉及的计算。在ME期间以固定大小提取了一些代表性特征。然后,使用离线预分类方法根据运行时特征预测最可能的sub-MB模式。事实证明,只有可能的sub-MB模式需要执行ME。实验结果表明,计算质量显着降低,而视频质量下降和比特率增加可忽略不计。

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