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Dataset and Metrics for Predicting Local Visible Differences

机译:预测局部可见差异的数据集和度量

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摘要

A large number of imaging and computer graphics applications require localized information on the visibility of image distortions. Existing image quality metrics are not suitable for this task as they provide a single quality value per image. Existing visibility metrics produce visual difference maps, and are specifically designed for detecting just noticeable distortions but their predictions are often inaccurate. In this work, we argue that the key reason for this problem is the lack of large image collections with a good coverage of possible distortions that occur in different applications. To address the problem, we collect an extensive dataset of reference and distorted image pairs together with user markings indicating whether distortions are visible or not. We propose a statistical model that is designed for the meaningful interpretation of such data, which is affected by visual search and imprecision of manual marking. We use our dataset for training existing metrics and we demonstrate that their performance significantly improves. We show that our dataset with the proposed statistical model can be used to train a new CNN-based metric, which outperforms the existing solutions. We demonstrate the utility of such a metric in visually lossless JPEG compression, super-resolution and watermarking.
机译:大量的成像和计算机图形应用程序需要有关图像失真可见性的本地化信息。现有的图像质量指标不适合该任务,因为它们为每个图像提供单个质量值。现有的可见性度量标准会生成视觉差异图,并且专门设计为仅检测明显的失真,但其预测通常不准确。在这项工作中,我们认为此问题的主要原因是缺乏大型图像集合,无法很好地覆盖在不同应用程序中发生的失真。为了解决该问题,我们收集了参考图像和失真图像对的广泛数据集,以及指示是否可见失真的用户标记。我们提出了一种统计模型,旨在对此类数据进行有意义的解释,该模型受视觉搜索和手动标记的不精确性影响。我们使用我们的数据集来训练现有指标,并证明它们的性能大大提高。我们表明,具有建议的统计模型的数据集可用于训练基于CNN的新指标,其性能优于现有解决方案。我们演示了这种度量在视觉无损JPEG压缩,超分辨率和水印中的实用性。

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