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A Novel No-Reference Video Quality Metric for Evaluating Temporal Jerkiness due to Frame Freezing

机译:一种新的无参考视频质量指标,用于评估帧冻结导致的时间抖动

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摘要

In this work, we propose a novel no-reference (NR) video quality metric that evaluates the impact of frame freezing due to either packet loss or late arrival. Our metric uses a trained neural network acting on features that are chosen to capture the impact of frame freezing on the perceived quality. The considered features include the number of freezes, freeze duration statistics, inter-freeze distance statistics, frame difference before and after the freeze, normal frame difference, and the ratio of them. We use the neural network to find the mapping between features and subjective test scores. We optimize the network structure and the feature selection through a cross-validation procedure, using training samples extracted from both VQEG and LIVE video databases. The resulting feature set and network structure yields accurate quality prediction for both the training data containing 54 test videos and a separate testing dataset including 14 videos, with Pearson correlation coefficients greater than 0.9 and 0.8 for the training set and the testing set, respectively. Our proposed metric has low complexity and could be utilized in a system with real-time processing constraint.
机译:在这项工作中,我们提出了一种新颖的无参考(NR)视频质量指标,用于评估由于丢包或延迟到达而导致的帧冻结的影响。我们的指标使用受过训练的神经网络,作用于选定的功能,以捕获帧冻结对感知质量的影响。考虑的功能包括冻结次数,冻结持续时间统计信息,冻结间距离统计信息,冻结前后的帧差,正常帧差及其比率。我们使用神经网络找到特征与主观考试成绩之间的映射。我们使用从VQEG和LIVE视频数据库中提取的训练样本,通过交叉验证程序优化网络结构和功能选择。所得的特征集和网络结构可为包含54个测试视频的训练数据和包含14个视频的单独测试数据集提供准确的质量预测,对于训练集和测试集,皮尔逊相关系数分别大于0.9和0.8。我们提出的度量标准具有较低的复杂度,可以在具有实时处理约束的系统中使用。

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