Li Donghui, Tanaka Midori, Horiuchi Takahiko
Graduate School of Science and Engineering, Chiba University, Yayoi-cho 1-33, Inage-ku, Chiba 263-8522, Japan.
Graduate School of Global and Transdisciplinary Studies, Chiba University, Yayoi-cho 1-33, Inage-ku, Chiba 263-8522, Japan.
J Imaging. 2022 Feb 27;8(3):59. doi: 10.3390/jimaging8030059.
This paper proposes an objective glossiness index for objects in halftone color images. In the proposed index, we consider the characteristics of the human visual system (HVS) and associate the image's structure distortion and statistical information. According to the difference in the number of strategies adopted by the HVS in judging the difference between images, it is divided into single and multi-strategy modeling. In this study, we advocate multiple strategies to determine glossy or non-glossy quality. We assumed that HVS used different visual mechanisms to evaluate glossy and non-glossy objects. For non-glossy images, the image structure dominated, so the HVS tried to use structural information to judge distortion (a strategy based on structural distortion detection). For glossy images, the glossy appearance dominated; thus, the HVS tried to search for the glossiness difference (an appearance-based strategy). Herein, we present an index for glossiness assessment that attempts to explicitly model the structural dissimilarity and appearance distortion. We used the contrast sensitivity function to account for the mechanism of halftone images when viewed by the human eye. We estimated the structure distortion for the first strategy by using local luminance and contrast masking; meanwhile, local statistics changing in the spatial frequency components for skewness and standard deviation were used to estimate the appearance distortion for the second strategy. Experimental results showed that these two mixed-distortion measurement strategies performed well in consistency with the subjective ratings of glossiness in halftone color images.
本文提出了一种用于半色调彩色图像中物体的客观光泽度指标。在所提出的指标中,我们考虑了人类视觉系统(HVS)的特性,并将图像的结构失真与统计信息相关联。根据HVS在判断图像差异时所采用策略数量的不同,将其分为单策略建模和多策略建模。在本研究中,我们主张采用多种策略来确定光泽或无光泽质量。我们假设HVS使用不同的视觉机制来评估有光泽和无光泽的物体。对于无光泽图像,图像结构起主导作用,因此HVS试图利用结构信息来判断失真(一种基于结构失真检测的策略)。对于有光泽图像,光泽外观起主导作用;因此,HVS试图寻找光泽度差异(一种基于外观的策略)。在此,我们提出一种用于光泽度评估的指标,该指标试图明确地对结构差异和外观失真进行建模。我们使用对比敏感度函数来解释人眼观察半色调图像时的机制。我们通过使用局部亮度和对比度掩蔽来估计第一种策略的结构失真;同时,利用空间频率分量中偏度和标准差的局部统计变化来估计第二种策略的外观失真。实验结果表明,这两种混合失真测量策略在与半色调彩色图像光泽度主观评级的一致性方面表现良好。