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Optimizing Multiscale SSIM for Compression via MLDS

机译:通过MLDS优化用于压缩的多尺度SSIM

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摘要

A crucial step in the assessment of an image compression method is the evaluation of the perceived quality of the compressed images. Typically, researchers ask observers to rate perceived image quality directly and use these rating measures, averaged across observers and images, to assess how image quality degrades with increasing compression. These ratings in turn are used to calibrate and compare image quality assessment algorithms intended to predict human perception of image degradation. There are several drawbacks to using such omnibus measures. First, the interpretation of the rating scale is subjective and may differ from one observer to the next. Second, it is easy to overlook compression artifacts that are only present in particular kinds of images. In this paper, we use a recently developed method for assessing perceived image quality, maximum likelihood difference scaling (MLDS), and use it to assess the performance of a widely-used image quality assessment algorithm, multiscale structural similarity (MS-SSIM). MLDS allows us to quantify supra-threshold perceptual differences between pairs of images and to examine how perceived image quality, estimated through MLDS, changes as the compression rate is increased. We apply the method to a wide range of images and also analyze results for specific images. This approach circumvents the limitations inherent in the use of rating methods, and allows us also to evaluate MS-SSIM for different classes of visual image. We show how the data collected by MLDS allow us to recalibrate MS-SSIM to improve its performance.
机译:评估图像压缩方法的关键步骤是评估压缩图像的感知质量。通常,研究人员要求观察者直接对感知到的图像质量进行评分,并使用在观察者和图像之间平均的这些评估指标来评估图像质量如何随着压缩率的提高而降低。这些等级依次用于校准和比较旨在预测人类对图像质量下降的感知的图像质量评估算法。使用这种综合措施有几个缺点。首先,评级量表的解释是主观的,一个观察者可能与另一个观察者有所不同。其次,很容易忽略仅在特定种类的图像中存在的压缩伪像。在本文中,我们使用一种最新开发的方法来评估感知的图像质量,最大似然差缩放(MLDS),并将其用于评估广泛使用的图像质量评估算法,多尺度结构相似性(MS-SSIM)的性能。 MLDS允许我们量化图像对之间的超阈值感知差异,并检查通过MLDS估计的感知图像质量如何随压缩率的增加而变化。我们将该方法应用于各种图像,并分析特定图像的结果。这种方法规避了使用评分方法固有的局限性,并允许我们还针对不同类别的可视图像评估MS-SSIM。我们展示了MLDS收集的数据如何使我们能够重新校准MS-SSIM以改善其性能。

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