Structure-Aware Halftoning Using the Iterative Method Controlling the Dot Placement

中间调 计算机科学 人工智能 印象 图像(数学) 计算机视觉 语调(文学) 相似性(几何) 锐化 过程(计算) 迭代和增量开发 像素 算法 万维网 艺术 文学类 软件工程 操作系统
作者
Fereshteh Abedini,Sasan Gooran,Vlado Kitanovski,Daniel Nyström
出处
期刊:Journal of Imaging Science and Technology [Society for Imaging Science & Technology]
卷期号:65 (6): 060404-14 被引量:5
标识
DOI:10.2352/j.imagingsci.technol.2021.65.6.060404
摘要

Many image reproduction devices, such as printers, are limited to only a few numbers of printing inks. Halftoning, which is the process to convert a continuous-tone image into a binary one, is, therefore, an essential part of printing. An iterative halftoning method, called Iterative Halftoning Method Controlling the Dot Placement (IMCDP), which has already been studied by research scholars, generally results in halftones of good quality. In this paper, we propose a structure-based alternative to this algorithm that improves the halftone image quality in terms of sharpness, structural similarity, and tone preservation. By employing appropriate symmetrical and non-symmetrical Gaussian filters inside the proposed halftoning method, it is possible to adaptively change the degree of sharpening in different parts of the continuous-tone image. This is done by identifying a dominant line in the neighborhood of each pixel in the original image, utilizing the Hough Transform, and aligning the dots along the dominant line. The objective and subjective quality assessments verify that the proposed structure-based method not only results in sharper halftones, giving more three-dimensional impression, but also improves the structural similarity and tone preservation. The adaptive nature of the proposed halftoning method makes it an appropriate algorithm to be further developed to a 3D halftoning method, which could be adapted to different parts of a 3D object by exploiting both the structure of the images being mapped and the 3D geometrical structure of the underlying printed surface.

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