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引用次数: 25
摘要
本文提出了一种新的约简参考(RR)视频质量度量。该方法利用了人类视觉系统(HVS)对视频中急剧变化的敏感性。该方法采用了时空方法,因此被命名为STAQ (spatial-temporal Assessment of Quality)。在STAQ的第一步中,我们采用时间方法在连续帧中寻找匹配区域。下一步,在时间方法中计算匹配区域的质量,采用空间方法。最后一步,以视频的运动活动密度为控制因素,根据在空间和时间域中采集的参数计算视频的质量。一个重要的改进在于考虑了以参考视频的运动活动密度表示的体验质量(QoE)。结果显示,在H.264和MPEG-2压缩和IP失真视频的情况下,即使与最先进的完整参考(FR)指标相比,也有很大的改进。
Spatial-temporal Video Quality Metric based on an estimation of QoE
In this work a new Reduced Reference (RR) Video Quality Metric (VQM) is proposed. The method takes advantage of the Human Visual System (HVS) sensitivity to sharp changes in the video. The proposed method has a spatial-temporal approach and because of that it is named as STAQ (Spatial-Temporal Assessment of Quality). In the first step of STAQ we take a temporal approach and find the matching regions in consecutive frames. In the next step, a spatial approach is taken in the way of calculating the quality of the matching regions in the temporal approach. In the last step, the quality of the video is calculated based on the parameters gathered in the spatial and temporal domain and using the motion activity density of the video as a controlling factor. An important improvement lies in taking into account the Quality of Experience (QoE) represented as the motion activity density of the reference video. The results show a great improvement in the case of H.264 and MPEG-2 compressed and IP distorted videos even when compared to state of the art Full Reference (FR) metrics.