Department of Electrical and Computer Engineering, University of Waterloo, Waterloo, Ontario N2L 3G1, Canada; email:
Annu Rev Vis Sci. 2021 Sep 15;7:437-464. doi: 10.1146/annurev-vision-100419-120301. Epub 2021 Aug 4.
Image quality assessment (IQA) models aim to establish a quantitative relationship between visual images and their quality as perceived by human observers. IQA modeling plays a special bridging role between vision science and engineering practice, both as a test-bed for vision theories and computational biovision models and as a powerful tool that could potentially have a profound impact on a broad range of image processing, computer vision, and computer graphics applications for design, optimization, and evaluation purposes. The growth of IQA research has accelerated over the past two decades. In this review, we present an overview of IQA methods from a Bayesian perspective, with the goals of unifying a wide spectrum of IQA approaches under a common framework and providing useful references to fundamental concepts accessible to vision scientists and image processing practitioners. We discuss the implications of the successes and limitations of modern IQA methods for biological vision and the prospect for vision science to inform the design of future artificial vision systems. (The detailed model taxonomy can be found at .).
图像质量评估(IQA)模型旨在建立视觉图像与其被人类观察者感知到的质量之间的定量关系。IQA 建模在视觉科学和工程实践之间起着特殊的桥梁作用,既是视觉理论和计算生物视觉模型的试验台,也是一种强大的工具,可能对图像处理、计算机视觉和计算机图形设计、优化和评估等广泛的应用领域产生深远的影响。在过去的二十年中,IQA 研究得到了快速发展。在这篇综述中,我们从贝叶斯的角度介绍了 IQA 方法,旨在将广泛的 IQA 方法统一在一个共同的框架下,并为视觉科学家和图像处理从业者提供易于理解的基本概念的参考。我们讨论了现代 IQA 方法在生物视觉方面的成功和局限性的影响,以及视觉科学为未来人工视觉系统设计提供信息的前景。(详细的模型分类法可在 找到)。