Department of Electrical and Computer Engineering, McMaster University, Hamilton, ON, Canada.
IEEE Trans Image Process. 2012 Jan;21(1):41-52. doi: 10.1109/TIP.2011.2161092. Epub 2011 Jun 30.
In this paper, we propose a new psychovisual quality metric of images based on recent developments in brain theory and neuroscience, particularly the free-energy principle. The perception and understanding of an image is modeled as an active inference process, in which the brain tries to explain the scene using an internal generative model. The psychovisual quality is thus closely related to how accurately visual sensory data can be explained by the generative model, and the upper bound of the discrepancy between the image signal and its best internal description is given by the free energy of the cognition process. Therefore, the perceptual quality of an image can be quantified using the free energy. Constructively, we develop a reduced-reference free-energy-based distortion metric (FEDM) and a no-reference free-energy-based quality metric (NFEQM). The FEDM and the NFEQM are nearly invariant to many global systematic deviations in geometry and illumination that hardly affect visual quality, for which existing image quality metrics wrongly predict severe quality degradation. Although with very limited or even without information on the reference image, the FEDM and the NFEQM are highly competitive compared with the full-reference SSIM image quality metric on images in the popular LIVE database. Moreover, FEDM and NFEQM can measure correctly the visual quality of some model-based image processing algorithms, for which the competing metrics often contradict with viewers' opinions.
本文提出了一种基于大脑理论和神经科学最新进展的新的图像视知觉质量度量方法,特别是自由能原理。图像的感知和理解被建模为一个主动推断过程,在这个过程中,大脑试图使用内部生成模型来解释场景。因此,视知觉质量与视觉感官数据可以被生成模型准确解释的程度密切相关,并且图像信号与其最佳内部描述之间的差异的上限由认知过程的自由能给出。因此,可以使用自由能来量化图像的感知质量。具体来说,我们开发了一种基于参考的自由能失真度量(FEDM)和一种无参考的自由能质量度量(NFEQM)。FEDM 和 NFEQM 对许多全局几何和光照系统偏差几乎没有影响,而这些偏差很难影响视觉质量,因此现有的图像质量度量方法错误地预测了严重的质量下降。尽管 FEDM 和 NFEQM 对参考图像的信息非常有限,甚至没有,但与流行的 LIVE 数据库中的图像的全参考 SSIM 图像质量度量相比,它们具有很高的竞争力。此外,FEDM 和 NFEQM 可以正确地测量一些基于模型的图像处理算法的视觉质量,而竞争的度量方法往往与观众的意见相矛盾。