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A novel pooling strategy for Full Reference Image Quality Assessment based on harmonic means

机译:基于谐波均值的全参考图像质量评估新池策略

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The most perceptual Full Reference Image Quality Assessment metrics (FR-IQA) shared a common two-step model; local quality measurement, and pooling. In this letter, a novel pooling strategy based on harmonic mean is proposed to predict the final quality score in FR-IQA. In contrast to arithmetic mean, the harmonic mean tends to emphasize the contributions from the local severely distorted regions or pixels in the definition of assessment function using reciprocal transformation. It is derived from the observations that humans visual attention is mostly affected with the region having severely distorted points or regions. In addition, the relationship of subjective visual quality with the quality score against different levels of distortion in the images is described as a non-linear procedure by introducing another reciprocal transformation in harmonic mean. The proposed pooling strategy is applied to some popular FR-IQA metrics, including SSIM, GSSIM, and FSIM. The experimental results have demonstrated that the metrics with proposed pooling strategy have better performances compared to the standard versions, especially on the images with small but seriously distorted regions. The proposed pooling strategy is computationally very efficient since only one averaging operation and two reciprocal transformations are required.
机译:最具感知力的全参考图像质量评估指标(FR-IQA)共享一个通用的两步模型;本地质量测量和汇总。在这封信中,提出了一种基于谐波均值的新颖合并策略,以预测FR-IQA中的最终质量得分。与算术平均值相反,谐波平均值倾向于在使用互逆变换的评估函数的定义中强调来自局部严重失真的区域或像素的贡献。从观察结果可以得出,人的视觉注意力主要受到具有严重变形的点或区域的区域的影响。另外,通过引入谐波均值中的另一个倒数变换,将主观视觉质量与质量分数相对于图像中不同程度的失真的关系描述为非线性过程。提议的池策略被应用于一些流行的FR-IQA度量标准,包括SSIM,GSSIM和FSIM。实验结果表明,与标准版本相比,具有建议的合并策略的度量具有更好的性能,特别是在具有较小但严重失真的区域的图像上。所提出的合并策略在计算上非常有效,因为只需要一个平均运算和两个倒数转换。

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