Cherepkova Olga, Amirshahi Seyed Ali, Pedersen Marius
Department of Computer Science, Norwegian University of Science and Technology, 2802 Gjøvik, Norway.
J Imaging. 2024 Jan 18;10(1):25. doi: 10.3390/jimaging10010025.
This paper is an investigation in the field of personalized image quality assessment with the focus of studying individual contrast preferences for natural images. To achieve this objective, we conducted an in-lab experiment with 22 observers who assessed 499 natural images and collected their contrast level preferences. We used a three-alternative forced choice comparison approach coupled with a modified adaptive staircase algorithm to dynamically adjust the contrast for each new triplet. Through cluster analysis, we clustered observers into three groups based on their preferred contrast ranges: low contrast, natural contrast, and high contrast. This finding demonstrates the existence of individual variations in contrast preferences among observers. To facilitate further research in the field of personalized image quality assessment, we have created a database containing 10,978 original contrast level values preferred by observers, which is publicly available online.
本文是关于个性化图像质量评估领域的一项研究,重点是研究个体对自然图像的对比度偏好。为实现这一目标,我们对22名观察者进行了一项实验室实验,他们对499张自然图像进行了评估,并收集了他们的对比度水平偏好。我们采用了三选一强制选择比较方法,并结合改进的自适应阶梯算法,为每个新的三元组动态调整对比度。通过聚类分析,我们根据观察者偏好的对比度范围将他们分为三组:低对比度、自然对比度和高对比度。这一发现表明观察者之间在对比度偏好上存在个体差异。为便于在个性化图像质量评估领域开展进一步研究,我们创建了一个数据库,其中包含观察者偏好的10978个原始对比度水平值,该数据库可在网上公开获取。