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Image quality assessment with mean squared error in a log based perceptual response domain

机译:在基于对数的感知响应域中具有均方误差的图像质量评估

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Up to now, there existing a lot of models that predict subjective quality of the contents of natural images which have undergone some unknown distortion procedures. These models, no matter fall in to the bottom-up mechanism or belong to the top-down functional modelling, fail to provide an easy-applied and reliable solution. The complex computation procedure prevents them from being widely used in related image processing areas such as image enhancement, image reconstruction and video coding. In the present work, we start from a two stage nonlinear perception model, which transforms the input image into a decorrelated one and then further reduces the redundancy between neighboring pixels by another nonlinear normalization procedure which transforms the previous output into a perceptual response domain. The final quality prediction is computed as the Euclid distance of the reference image and the distorted one in this response domain, this will make the new model be readily applied in other areas.
机译:到目前为止,已有许多模型可以预测经历了一些未知失真过程的自然图像内容的主观质量。这些模型,无论属于自下而上的机制,还是属于自上而下的功能建模,都无法提供易于应用且可靠的解决方案。复杂的计算过程使它们无法在相关的图像处理领域中广泛使用,例如图像增强,图像重建和视频编码。在当前的工作中,我们从两阶段非线性感知模型开始,该模型将输入图像转换为去相关图像,然后通过另一种非线性归一化过程进一步减少相邻像素之间的冗余,该过程将先前的输出转换为感知响应域。最终质量预测的计算方式为参考图像的Euclid距离和该响应域中的失真图像的欧几里得距离,这将使新模型易于在其他领域应用。

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