Data visualization is a critical component in terms of interacting with floating-point output data from large model simulation codes. Indeed, postprocessing analysis workflows on simulation data often generate a large number of images from the raw data, many of which are then compared to each other or to specified reference images. In this image-comparison scenario, image quality assessment (IQA) measures are quite useful, and the Structural Similarity Index (SSIM) continues to be a popular choice. However, generating large numbers of images can be costly, and plot-specific (but data independent) choices can affect the SSIM value. A natural question is whether we can apply the SSIM directly to the floating-point simulation data and obtain an indication of whether differences in the data are likely to impact a visual assessment, effectively bypassing the creation of a specific set of images from the data. To this end, we propose an alternative to the popular SSIM that can be applied directly to the floating point data, which we refer to as the Data SSIM (DSSIM). While we demonstrate the usefulness of the DSSIM in the context of evaluating differences due to lossy compression on large volumes of simulation data from a popular climate model, the DSSIM may prove useful for many other applications involving simulation or image data.
翻译:事实上,模拟数据后处理分析工作流程往往从原始数据中产生大量图像,其中许多图像随后相互比较,或与指定的参考图像进行比较。在这种图像比较的情景中,图像质量评估措施非常有用,结构相似性指数(SSIM)继续是一个受欢迎的选择。然而,生成大量图像可能成本高昂,而地块(但数据独立)选择可能会影响SSSIM值。一个自然的问题是,我们是否能够直接将SSSIM直接应用于浮动点模拟数据,并获得数据差异是否可能影响视觉评估的表示,有效地绕过数据中特定图像集的创建。为此,我们提出一个受欢迎的SSSIM指标的替代方案,可直接用于浮动点数据,我们称之为数据SSIM(DSSIM) 。虽然我们展示了DSSIM在评估由于大量损失而导致的悬浮点模拟数据压缩方面的差异方面的实用性,但从大量模拟数据应用中可以证明DSSIM系统在大量模拟数据应用中的有用性。