改进MSE的压缩视频质量评估

Sudeng Hu, Lina Jin, C.-C. Jay Kuo
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引用次数: 2

摘要

本文研究了一种结合人的主观视觉经验来调整编码视频质量评估中均方误差(MSE)值的方法。首先,在一定的编码率范围内,我们提出了一个平均意见分数(MOS)与编码视频的MSE值的对数函数之间的线性模型。实验数据验证了该模型的正确性。进一步简化后,该模型只包含一个由视频特征决定的参数。接下来,我们采用机器学习的方法来学习这个参数。具体来说,我们选择特征来将视频内容分类,每组中的视频在特征上更加相似。然后,在每个视频组内训练和预测合适的模型参数。在一个编码视频库上的实验结果验证了该算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Compressed video quality assessment with modified MSE
A method to adjust the mean-squared-errors (MSE) value for coded video quality assessment is investigated in this work by incorporating subjective human visual experience. First, we propose a linear model between the mean opinioin score (MOS) and a logarithmic function of the MSE value of coded video under a range of coding rates. This model is validated by experimental data. With further simplification, this model contains only one parameter to be determined by video characteristics. Next, we adopt a machine learing method to learn this parameter. Specifically, we select features to classify video content into groups, where videos in each group are more homoegeneous in their characteristics. Then, a proper model parameter can be trained and predicted within each video group. Experimental results on a coded video database are given to demonstrate the effectiveness of the proposed algorithm.
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