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Evaluating image quality measures to assess the impact of lossy data compression applied to climate simulation data

机译:评估图像质量措施,以评估有损数据压缩的影响应用于气候模拟数据

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摘要

Applying lossy data compression to climate model output is an attractive means of reducing the enormous volumes of data generated by climate models. However, because lossy data compression does not exactly preserve the original data, its application to scientific data must be done judiciously. To this end, a collection of measures is being developed to evaluate various aspects of lossy compression quality on climate model output. Given the importance of data visualization to climate scientists interacting with model output, any suite of measures must include a means of assessing whether images generated from the compressed model data are noticeably different from images based on the original model data. Therefore, in this work we conduct a forced-choice visual evaluation study with climate model data that surveyed more than one hundred participants with domain relevant expertise. In addition to the images created from unaltered climate model data, study images are generated from model data that is subjected to two different types of lossy compression approaches and multiple levels (amounts) of compression. Study participants indicate whether a visual difference can be seen, with respect to the reference image, due to lossy compression effects. We assess the relationship between the perceptual scores from the user study to a number of common (full reference) image quality assessment (IQA) measures, and use statistical models to suggest appropriate measures and thresholds for evaluating lossily compressed climate data. We find the structural similarity index (SSIM) to perform the best, and our findings indicate that the threshold required for climate model data is much higher than previous findings in the literature.
机译:对气候模型输出应用有损耗的数据压缩是一种有吸引力的方法,可以减少气候模型产生的巨大数据。但是,由于有损数据压缩不完全保留原始数据,因此必须明智地完成其对科学数据的应用。为此,正在开发一系列措施,以评估气候模型输出上有损压缩质量的各个方面。鉴于数据可视化对气候科学家的重要性与模型输出相互作用,任何措施都必须包括评估从压缩模型数据生成的图像是否明显不同于基于原始模型数据的图像。因此,在这项工作中,我们开展强制选择的视觉评估研究,与气候模型数据进行调查,这些数据与域相关专业知识的多百名参与者进行调查。除了从未改变的气候模型数据创建的图像之外,研究图像是由模型数据生成的,该模型数据经受两种不同类型的损耗压缩方法和多个级别(金额)的压缩。研究参与者表示由于有损的压缩效果,可以看到视觉差异是否可以看到视觉差异。我们评估从用户学习的感知分数与许多常见(完整参考)图像质量评估(IQA)测量之间的关系,并使用统计模型来建议评估损坏压缩气候数据的适当措施和阈值。我们发现结构相似性指数(SSIM)才能执行最佳,我们的研究结果表明,气候模型数据所需的阈值远高于文献中的先前发现。

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