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Joint model of gradient magnitude and Gabor features via Spatio-Temporal slice

机译:通过时空切片的梯度幅度和Gabor特征的联合模型

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摘要

To form a high-performance video quality predictor, we developed a framework for full-reference (FR) video quality assessment that integrates Spatio-temporal slice analysis (STS) to create a high-performance predictor of video quality. However, both gradient and Gabor are spatial-temporal structural capturers used for the simultaneous extraction of both spatial and temporal features. In this paper, we proposed a novel VQA algorithm via a joint model of gradient magnitude and Gabor features (JMG) between the STS images of the reference videos and their distorted counterparts to assess the degradation of video quality effectively. Firstly, gradient magnitude and the Gabor filter were constructed to extract the spatiotemporal features of the video sequence. However, the two-feature model combined to predict the perceptual quality of frames. This new proposed VQA model is known as the horizontal and time STS (HT-JMG) model. To further investigate the influence of spatial dissimilarity, we combined the frame-by-frame spatial T-JMG(S) factor with the HT-JMG and propose another VQA model, called the time, horizontal, and vertical STS (THV-JMG) model. Finally, the results of the experiment showed that the proposed method has a strong correlation with subjective perception and is competitive with state-of-the-art full reference VQA models.
机译:为了形成高性能视频质量预测因子,我们开发了一个用于全引用(FR)视频质量评估的框架,它集成了时空切片分析(STS)以创建视频质量的高性能预测仪。然而,两个梯度和牧师都是用于同时提取空间和时间特征的空间颞型结构捕获器。在本文中,我们通过参考视频的STS图像与其失真的对应物之间的梯度幅度和Gabor特征(JMG)的联合模型提出了一种新的VQA算法,以有效地评估视频质量的降低。首先,构建梯度幅度和Gabor过滤器以提取视频序列的时空特征。然而,两个特征模型结合以预测帧的感知质量。这种新的提议的VQA模型称为水平和时间STS(HT-JMG)模型。为了进一步研究空间​​不相似性的影响,我们将逐帧空间T-JMG与HT-JMG组合并提出另一个VQA模型,称为时间,水平和垂直STS(THV-JMG)模型。最后,实验结果表明,该方法与主观感知具有强烈的相关性,并具有最先进的完整参考VQA模型具有竞争力。

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