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Video Quality Assessment by Sparse Representation and Dynamic Atom Classification

机译:稀疏表示和动态原子分类的视频质量评估

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Finding that not all dictionary atoms are closely related to degradation in visual signal, we innovatively design a distortion sensitivity guided Dynamic Atom Classification (DAC) strategy to separate distorted signal. Then, we propose a novel DAC-based full-reference video quality assessment (VQA) method. The method includes two parts: spatial quality evaluation and temporal quality evaluation. Spatially, we train a distortion-aware dictionary, get sparse representation of video patches, and dynamically classify activated dictionary atoms. Every frame is separated into difference and basic components, and spatial similarity is aggregated by component similarities. Temporally, we calculate gradient similarity of frame difference to capture motion information. The experimental results indicate the effectiveness of the proposed algorithm compared with state-of-art VQA methods.
机译:发现并非所有字典原子都与视觉信号中的降级密切相关,我们创新设计了一种失真灵敏度导致动态原子分类(DAC)策略以分离扭曲的信号。然后,我们提出了一种基于新的DAC的全参考视频质量评估(VQA)方法。该方法包括两部分:空间质量评估和时间质量评估。空间,我们训练失真感知的字典,获得视频修补程序的稀疏表示,并动态分类激活的字典原子。每个帧分为差异和基本组件,并且空间相似度由组件相似度聚合。在暂时,我们计算帧差的梯度相似性以捕获运动信息。实验结果表明该算法与最先进的VQA方法相比的算法的有效性。

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