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No-Reference Video Quality Assessment Based on Visual Memory Modeling

机译:基于可视内存建模的无参考视频质量评估

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摘要

Objective video quality assessment plays an important role in a variety of video processing applications such as video compression, transmission, visualization, and display. This paper proposes a no-reference video quality assessment model based on visual memory understanding. Inspired by the findings of neuroscience researchers, who argue there is a large overlap between the active human brain area when performing video quality assessment and saliency detection tasks, saliency maps are employed here to assist the quality assessment. To this end, we first generate the saliency maps using CLBP (Complete Local Binary Patterns) features of the residual frames. Then, a model of visual memory is created from the statistics of saliency maps. This is followed by learning the video quality from the visual memory, saliency, and frame features through a support vector regression pipeline. The experimental results on the state-of-the-art LIVE and SJTU video datasets indicate that the proposed no-reference video quality assessment algorithm is effective and performs statistically better than several other state-of-the-art approaches.
机译:客观视频质量评估在各种视频处理应用中起重要作用,例如视频压缩,传输,可视化和显示。本文提出了一种基于视觉记忆理解的无参考视频质量评估模型。灵感来自神经科学研究人员的研究员,在执行视频质量评估和显着性检测任务时,争论活跃人类脑区域之间存在大的重叠,这里采用显着性图来帮助质量评估。为此,我们首先使用剩余帧的CLBP(完整的本地二进制模式)特征来生成显着性图。然后,从显着图的统计数据创建一个可视存储器的模型。然后通过支持向量回归管道从可视存储器,显着性和帧特征学习视频质量。关于最先进的Live和SJTU视频数据集的实验结果表明,所提出的无参考视频质量评估算法是有效的,并且在统计上比其他几种最先进的方法更好地执行。

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