Saliency map in image visual quality assessment and processing

Q3 Computer Science Radioelectronic and Computer Systems Pub Date : 2023-03-07 DOI:10.32620/reks.2023.1.09
V. Lukin, E. Bataeva, S. Abramov
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引用次数: 2

Abstract

Images are mainly viewed and analyzed by humans. Because of this, in the characterization of image quality and effectiveness of image processing, it is necessary to take into account the peculiarities of the human vision system and cognition that are very complex. Saliency maps as well as priority and meaning maps introduced recently are the attempts to incorporate specific features of human vision into image analysis and processing fields. Many authors that consider the aforementioned maps consider them from different viewpoints. Thus, the basic subject of this paper is the factors that influence and determine these maps. Among such factors, there are low-level features as well as social and psychological ones such as emotions, age, and life values. The main goal of this paper is to give a brief survey of these factors and to consider how maps are already used in image quality assessment and processing as well as how they can be employed in the future. The tasks of the paper are to provide a definition of saliency, priority, and meaning maps, to analyze the factors that influence these maps, and to evaluate what improvement can be obtained due to taking maps into account in the assessment of image visual quality and such image processing operations as quality assessment, denoising, and lossy compression. The main result is that, by taking saliency maps into account, image quality assessment and processing efficiency can be sufficiently improved, especially for applications oriented on image viewing and analysis by observers or customers. This can be done by the simple weighting of local estimates of a given metric with further aggregation as well as by approaches based on neural networks. Using different quantitative criteria, we show what positive results can be got due to incorporating maps into quality assessment and image processing. As conclusion, we present possible directions of future research that are mainly related to an adaptation of denoising and lossy compression parameters to peculiarities of human attention.
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图像视觉质量评价与处理中的显著性图
图像主要由人类观看和分析。正因为如此,在表征图像质量和图像处理的有效性时,有必要考虑到人类视觉系统和认知的复杂性。最近引入的显著性图以及优先级和意义图是将人类视觉的特定特征纳入图像分析和处理领域的尝试。许多考虑上述地图的作者从不同的角度考虑这些地图。因此,本文的基本主题是影响和决定这些地图的因素。在这些因素中,既有低级特征,也有社会和心理特征,如情绪、年龄和人生价值观。本文的主要目标是对这些因素进行简要调查,并考虑地图如何在图像质量评估和处理中使用,以及未来如何使用它们。本文的任务是提供显著性、优先级和意义图的定义,分析影响这些图的因素,并评估在评估图像视觉质量和图像处理操作(如质量评估、去噪和有损压缩)时考虑图可以获得哪些改进。主要结果是,通过考虑显著性图,可以充分提高图像质量评估和处理效率,特别是对于面向观察者或客户的图像查看和分析的应用。这可以通过对给定度量的局部估计进行简单加权并进行进一步聚合来实现,也可以通过基于神经网络的方法来实现。使用不同的定量标准,我们展示了将地图纳入质量评估和图像处理可以获得哪些积极结果。作为结论,我们提出了未来研究的可能方向,这些方向主要与去噪和有损压缩参数适应人类注意力的特点有关。
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来源期刊
Radioelectronic and Computer Systems
Radioelectronic and Computer Systems Computer Science-Computer Graphics and Computer-Aided Design
CiteScore
3.60
自引率
0.00%
发文量
50
审稿时长
2 weeks
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