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Fast H.264 Encoding Based on Statistical Learning

机译:基于统计学习的快速H.264编码

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In this paper, we propose an efficient video coding system that applies statistical learning methods to reduce the computational cost in H.264 encoder. The proposed method can be applied to many coding components in H.264, like intermode decision, multi-reference motion estimation, intra-mode prediction. First, representative features are extracted from video to build the learning models. Then, an off-line pre-classification approach is used to determine the best results from the extracted features, thus a significant amount of computation is reduced based on the classification strategy. The proposed statistical learning based approach is applied to the aforementioned three main components and a novel framework of learning based H.264 encoder is proposed to speed up the computation. Experimental results show that the motion estimation (ME) time of the proposed system is significantly speed up with twelve times faster than the H.264 encoder with a conventional fast ME algorithm, and the total encoding time of the proposed encoder is greatly reduced with about four times faster than the fast encoder EPZS in the H.264 reference code with negligible video quality degradation.
机译:在本文中,我们提出了一种有效的视频编码系统,该系统采用统计学习方法来减少H.264编码器中的计算成本。所提出的方法可以应用于H.264中的许多编码组件,如模式间判决,多参考运动估计,模式内预测。首先,从视频中提取代表性特征以构建学习模型。然后,使用离线预分类方法从提取的特征中确定最佳结果,从而基于分类策略减少了大量计算。提出的基于统计学习的方法应用于上述三个主要组件,并提出了一种基于学习的H.264编码器新框架,以加快计算速度。实验结果表明,与传统快速ME算法的H.264编码器相比,该系统的运动估计(ME)时间显着加快,速度提高了十二倍,并且该编码器的总编码时间大大减少了大约20%。 H.264参考代码中的快速编码器EPZS快四倍,而视频质量下降可忽略不计。

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