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引用次数: 3
摘要
HEVC (high efficiency video coding)作为最新的视频编码标准,比H.264/AVC更高效,但也带来了很高的计算复杂度。为了减少编码单元分割或预测单元模式确定的时间,本文提出了一种基于人工神经网络和纹理分析的快速算法。首先,我们根据四叉树的CU深度,获取训练集的CU并标记为“分裂”和“未分裂”。其次,对“分裂”和“未分裂”CU的纹理特征进行量化和编译,在此基础上设置纹理阈值,以判断当前CU是否分裂或初步采用哪种预测模式。最后,对于无法从纹理判断的cu,我们使用人工神经网络或HM (HEVC测试模型)软件的原始算法来确定。与HM15.0相比,该算法平均节省51.85%的编码时间,编码效率损失可以忽略不计。
Fast HEVC CU/PU mode decision based on ANN and texture analysis
HEVC (high efficiency video coding), as the latest video coding standard, is more efficient than H.264/AVC, nevertheless it also brings in a very high computational complexity. To reduce the time of CU (coding unit) splitting or PU (prediction unit) mode deciding, a fast algorithm based on ANN (artificial neural network) and texture analysis is proposed in this paper. First, we acquire and then label the CUs of the training set with “split” and “unsplit” according to the quad-tree CU depth. Second, the texture features of “split” and “unsplit” CUs are quantified and compiled, based on which we can set the texture thresholds to judge whether or not to split the current CU or which prediction mode should be taken preliminarily. Finally, in terms of the CUs we can't judge from texture, we use ANN or the original algorithm of HM (HEVC test model) software to decide. Compared to HM15.0, the proposed algorithm can save 51.85% encoding time on average with negligible coding efficiency loss.