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No-reference quality assessment of HEVC video streams based on visual memory modelling

机译:基于可视内存建模的HEVC视频流的无参考质量评估

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摘要

Providing adequate Quality of Experience (QoE) to end-users is crucial for streaming service providers. In this paper, in order to realize automatic quality assessment, a No-Reference (NR) bitstream Human-Vision-System(HVS)-based video quality assessment (VQA) model is proposed. Inspired by discoveries from the neuroscience community, which suggest there is a considerable overlap between active areas of the brain when engaging in video quality assessment and saliency detection tasks, saliency maps are used in the proposed method to improve the quality assessment accuracy. To this end, saliency maps are first generated from features extracted from the HEVC bitstream. Then, saliency map statistics are employed to create a model of visual memory. Finally, a support vector regression pipeline learns an estimate of the video quality from the visual memory, saliency, and frame features. Evaluations on SJTU dataset indicate that the proposed bitstream based no reference video quality assessment algorithm achieves a competitive performance.
机译:为最终用户提供足够的经验质量(QoE)对于流媒体服务提供商至关重要。在本文中,为了实现自动质量评估,提出了一种无参考(NR)比特流人 - 视觉系统(HVS)的基于视频质量评估(VQA)模型。灵感来自神经科学界的发现,这表明在从事视频质量评估和显着性检测任务时,大脑的有效区域之间存在相当大的重叠,所以在提出的方法中使用显着性图来提高质量评估准确性。为此,首先从HEVC比特流中提取的特征生成显着性图。然后,使用显着性图统计来创建可视存储器的模型。最后,支持向量回归管道从可视内存,显着性和帧特征中了解视频质量的估计。 SJTU数据集的评估表明所提出的基于比特流的不参考视频质量评估算法实现了竞争性能。

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