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Structure-preserving Image Quality Assessment

机译:保结构图像质量评估

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Perceptual Image Quality Assessment (IQA) has many applications. Existing IQA approaches typically work only for one of three scenarios: full-reference, non-reference, or reduced-reference. Techniques that attempt to incorporate image structure information often rely on hand-crafted features, making them difficult to be extended to handle different scenarios. On the other hand, objective metrics like Mean Square Error (MSE), while being easy to compute, are often deemed ineffective for measuring perceptual quality. This paper presents a novel approach to perceptual quality assessment by developing an MSE-like metric, which enjoys the benefit of MSE in terms of inexpensive computation and universal applicability while allowing structural information of an image being taken into consideration. The latter was achieved through introducing structure-preserving kernelization into a MSE-like formulation. We show that the method can lead to competitive FR-IQA results. Further, by developing a feature coding scheme based on this formulation, we extend the model to improve the performance of NR-IQA methods. We report extensive experiments illustrating the results from both our FR-IQA and NR-IQA algorithms with comparison to existing state-of-the-art methods.
机译:感知图像质量评估(IQA)有许多应用。现有的IQA方法通常仅适用于以下三种情况之一:完全参考,非参考或简化参考。试图合并图像结构信息的技术通常依赖于手工制作的功能,从而使其难以扩展以处理不同的场景。另一方面,诸如均方误差(MSE)之类的客观指标虽然易于计算,但通常被认为无法有效地衡量感知质量。本文提出了一种通过开发类似于MSE的度量进行感知质量评估的新颖方法,该方法在便宜的计算和通用性方面享有MSE的优势,同时允许考虑图像的结构信息。后者是通过将保留结构的核化引入类似MSE的配方中来实现的。我们表明该方法可以导致竞争性的FR-IQA结果。此外,通过开发基于此公式的特征编码方案,我们扩展了模型以提高NR-IQA方法的性能。我们报告了广泛的实验,这些实验说明了我们的FR-IQA和NR-IQA算法的结果,并与现有的最新方法进行了比较。

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