论文标题
BIQ2021:一个大规模的盲图质量评估数据库
BIQ2021: A Large-Scale Blind Image Quality Assessment Database
论文作者
论文摘要
由于广泛使用数字多媒体设备,对数字图像的感知质量的评估变得越来越重要。智能手机和高速互联网只是两个示例的技术示例,这些示例已乘以可用的多媒体内容。因此,获得客观质量评估培训所需的代表性数据集是一个重大挑战。本文介绍了盲图质量评估数据库BIQ2021。通过选择具有自然发生扭曲和可靠标签的图像,数据集解决了获得无参考图像质量评估的代表性图像的挑战。该数据集由三组图像组成:那些无意用于图像质量评估的图像,有意引入自然扭曲的图像以及从开源图像共享平台中拍摄的图像。它试图维护各种设备的各种图像集合,其中包含各种不同类型的对象以及不同程度的前景和背景信息。为了获得可靠的分数,这些图像使用单个刺激方法在实验室环境中主观评分。该数据库包含有关主观评分,人类主题统计以及每个图像的标准偏差的信息。数据集的平均意见分数(MOS)使其可用于评估视觉质量。此外,建议的数据库用于评估现有的盲图质量评估方法,并使用Pearson和Spearman的相关系数分析得分。图像数据库和MOS可自由使用和基准测试。
The assessment of the perceptual quality of digital images is becoming increasingly important as a result of the widespread use of digital multimedia devices. Smartphones and high-speed internet are just two examples of technologies that have multiplied the amount of multimedia content available. Thus, obtaining a representative dataset, which is required for objective quality assessment training, is a significant challenge. The Blind Image Quality Assessment Database, BIQ2021, is presented in this article. By selecting images with naturally occurring distortions and reliable labeling, the dataset addresses the challenge of obtaining representative images for no-reference image quality assessment. The dataset consists of three sets of images: those taken without the intention of using them for image quality assessment, those taken with intentionally introduced natural distortions, and those taken from an open-source image-sharing platform. It is attempted to maintain a diverse collection of images from various devices, containing a variety of different types of objects and varying degrees of foreground and background information. To obtain reliable scores, these images are subjectively scored in a laboratory environment using a single stimulus method. The database contains information about subjective scoring, human subject statistics, and the standard deviation of each image. The dataset's Mean Opinion Scores (MOS) make it useful for assessing visual quality. Additionally, the proposed database is used to evaluate existing blind image quality assessment approaches, and the scores are analyzed using Pearson and Spearman's correlation coefficients. The image database and MOS are freely available for use and benchmarking.