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A No-Reference Metric for Perceived Gaussian Blur

机译:感知高斯模糊的一个没有参考度量

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摘要

Objective metrics to predict the perceived strength of artifacts in displayed video are useful to improve the overall image quality. Since the original image is usually not available in real-time applications, a no-reference metric should be used. In this paper, our approach to a no-reference blur metric for a subset of images of the LIVE database is discussed. The contrast sensitivity function is used to design six spatial band-pass filters with which the still images are filtered. Subsequently, the standard deviation and the corresponding variance in the band-pass filtered images are calculated and used as input to a linear regression model to fit the weight of the standard deviation and variance for each frequency band to the subjective blur scores. The resulting metric yields a Pearson correlation coefficient of 0.881 with the logarithm of the subjective blur scores. The metric is proven reasonably stable against different content by randomly selecting a subset of the images for training and testing the model.
机译:客观指标预测显示视频中伪影的感知强度可用于提高整体图像质量。由于原始图像通常在实时应用中不可用,因此应使用无引用度量标准。在本文中,讨论了我们对实时数据库图像子集的No-Regition模糊度量的方法。对比度灵敏度函数用于设计六个空间带通滤波器,其中滤波静止图像。随后,计算带通滤波图像中的标准偏差和相应的方差,并用作线性回归模型的输入,以适合每个频带到主体模糊分数的标准偏差和方差的权重。所得度量产生0.881的Pearson相关系数,具有主观模糊分数的对数。通过随机选择用于训练和测试模型的图像的子集来证明度量标准与不同内容相当稳定。

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