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No-reference video quality assessment based on perceptual features extracted from multi-directional video spatiotemporal slices images

机译:基于从多方向视频时空切片图像中提取的感知特征的无参考视频质量评估

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As video applications become more popular, no-reference video quality assessment (NR-VQA) has become a focus of research. In many existing NR-VQA methods, perceptual feature extraction is often the key to success. Therefore, we design methods to extract the perceptual features that contain a wider range of spatiotemporal information from multidirectional video spatiotemporal slices (STS) images (the images generated by cutting video data parallel to temporal dimension in multiple directions) and use support vector machine (SVM) to perform a successful NR video quality evaluation in this paper. In the proposed NR-VQA design, we first extracted the multi-directional video STS images to obtain as much as possible the overall video motion representation. Secondly, the perceptual features of multi-directional video STS images such as the moments of feature maps, joint distribution features from the gradient magnitude and filtering response of Laplacian of Gaussian, and motion energy characteristics were extracted to characterize the motion statistics of videos. Finally, the extracted perceptual features were fed in SVM or multilayer perceptron (MLP) to perform training and testing. And the experimental results show that the proposed method has achieved the state-of-the-art quality prediction performance on the largest existing annotated video database.
机译:随着视频应用变得越来越流行,无参考视频质量评估(NR-VQA)已成为研究的重点。在许多现有的NR-VQA方法中,感知特征提取通常是成功的关键。因此,我们设计了一些方法来从多方向视频时空切片(STS)图像(通过在多个方向上平行于时间维度切割视频数据而生成的图像)​​中提取包含更广泛时空信息的感知特征,并使用支持向量机(SVM) ),以成功进行NR视频质量评估。在提出的NR-VQA设计中,我们首先提取了多方向视频STS图像,以获得尽可能多的整体视频运动表示。其次,提取多方向视频STS图像的感知特征,例如特征图的矩,高斯拉普拉斯算子的梯度幅度和滤波响应的联合分布特征,运动能量特征,以表征视频的运动统计。最后,将提取的感知特征输入SVM或多层感知器(MLP)中进行训练和测试。实验结果表明,该方法在现有最大的带注释视频数据库上达到了最先进的质量预测性能。

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