IEEE Trans Image Process. 2017 Oct;26(10):4725-4740. doi: 10.1109/TIP.2017.2713945. Epub 2017 Jun 8.
Measuring digital picture quality, as perceived by human observers, is increasingly important in many applications in which humans are the ultimate consumers of visual information. Standard dynamic range (SDR) images provide 8 b/color/pixel. High dynamic range (HDR) images, usually created from multiple exposures of the same scene, can provide 16 or 32 b/color/pixel, but need to be tonemapped to SDR for display on standard monitors. Multiexposure fusion (MEF) techniques bypass HDR creation by fusing an exposure stack directly to SDR images to achieve aesthetically pleasing luminance and color distributions. Many HDR and MEF databases have a relatively small number of images and human opinion scores, obtained under stringently controlled conditions, thereby limiting realistic viewing. Moreover, many of these databases are intended to compare tone-mapping algorithms, rather than being specialized for developing and comparing image quality assessment models. To overcome these challenges, we conducted a massively crowdsourced online subjective study. The primary contributions described in this paper are: 1) the new ESPL-LIVE HDR Image Database that we created containing diverse images obtained by tone-mapping operators and MEF algorithms, with and without post-processing; 2) a large-scale subjective study that we conducted using a crowdsourced platform to gather more than 300 000 opinion scores on 1811 images from over 5000 unique observers; and 3) a detailed study of the correlation performance of the state-of-the-art no-reference image quality assessment algorithms against human opinion scores of these images. The database is available at http://signal.ece.utexas.edu/%7Edebarati/HDRDatabase.zip.
测量人类观察者感知的数字图像质量在许多应用中变得越来越重要,这些应用中人类是视觉信息的最终消费者。标准动态范围 (SDR) 图像提供 8 b/颜色/像素。高动态范围 (HDR) 图像通常由同一场景的多次曝光创建,可以提供 16 或 32 b/颜色/像素,但需要进行色调映射才能在标准显示器上显示 SDR。多曝光融合 (MEF) 技术通过将曝光堆栈直接融合到 SDR 图像上来实现美学上令人愉悦的亮度和颜色分布,从而绕过 HDR 创作。许多 HDR 和 MEF 数据库都包含相对较少的图像和人类意见分数,这些分数是在严格控制的条件下获得的,从而限制了真实的观看体验。此外,这些数据库中的许多旨在比较色调映射算法,而不是专门用于开发和比较图像质量评估模型。为了克服这些挑战,我们进行了大规模众包在线主观研究。本文主要贡献如下:1)我们创建了新的 ESPL-LIVE HDR 图像数据库,其中包含通过色调映射算子和 MEF 算法获得的不同图像,以及带有和不带有后处理的图像;2)我们使用众包平台进行了一项大规模主观研究,收集了超过 5000 名独特观察者对 1811 张图像的 30 多万条意见评分;3)详细研究了最先进的无参考图像质量评估算法与这些图像的人类意见评分之间的相关性性能。该数据库可在 http://signal.ece.utexas.edu/%7Edebarati/HDRDatabase.zip 处获得。