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Using Mean-Squared Error to Assess Visual Image Quality

机译:使用均衡误差来评估视觉图像质量

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Conclusions about the usefulness of mean-squared error for predicting visual image quality are presented in this paper. A standard imaging model was employed that consisted of: an object, point spread function, and noise. Deconvolved reconstructions were recovered from blurred and noisy measurements formed using this model. Additionally, image reconstructions were regularized by classical Fourier-domain filters. These post-processing steps generated the basic components of mean-squared error: bias and pixel-by-pixel noise variances. Several Fourier domain regularization filters were employed so that a broad range of bias/variance tradeoffs could be analyzed. Results given in this paper show that mean-squared error is a reliable indicator of visual image quality only when the images being compared have approximately equal bias/variance ratios.
机译:本文提出了关于预测视觉图像质量的平均平均误差的有用性的结论。 采用标准成像模型,包括:对象,点扩散函数和噪声。 从使用该模型形成的模糊和嘈杂的测量中回收了去卷发的重建。 另外,通过经典的傅里叶域滤波器规范图像重建。 这些后处理步骤生成了平均误差的基本组件:偏置和像素逐像素噪声差异。 采用了几个傅里叶域正则化滤波器,以便分析广泛的偏差/方差权衡。 本文给出的结果表明,仅当被比较的图像具有近似相等的偏置/方差比时,均匀平均误差是视觉图像质量的可靠指示器。

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