Content-color-dependent screening (CCDS) using regular or irregular clustered-dot halftones

Altyngul Jumabayeva, T. Frank, Y. Ben-Shoshan, R. Ulichney, J. Allebach
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Abstract

In our previous work, we have presented an HVS-based model for the superposition of two clustered-dot color halftones, which are widely used for electrophotographic printers due to their relatively poor print stability. The model helps us to decide what are the best color assignments for the two regular or irregular halftones that will minimize the perceived error [1]. After applying our model to the superposition of three and four clustered-dot color halftones, it was concluded that this color assignment plays a significant role in image quality. Moreover, for different combinations of colorant absorptance values, their corresponding best color assignments turn out to be different. Hence, in this paper we propose to apply different color assignments within the image depending on the local color and content of the image. If the image content locally has a high variance of color and texture, the artifacts due to halftoning will not be as visible as the artifacts in smooth areas of the image. Therefore, the focus of this paper is to detect smooth areas of the image and apply the best color assigments in those areas. In order to detect smooth areas of the image, it was decided to segment the image based on the color of the content. We used the well-known K-means clustering algorithm along with an edge detection algorithm in order to segment an image into clusters. We then used our spatiochromatic HVS-based model for the superposition of four halftones in order to search for the best color assignment in a particular cluster. This approach is primarily directed towards good quality rendering of large smooth areas, especially areas containing important memory colors, such as flesh tones. We believe that content-color-dependent screening can play an important role for developing high quality printed color images.
使用规则或不规则簇点半色调的内容色相关筛选(CCDS)
在我们之前的工作中,我们提出了一个基于hvs的模型,用于两个聚簇点彩色半色调的叠加,由于它们的打印稳定性相对较差,因此被广泛用于电子照相打印机。该模型帮助我们确定两个规则或不规则半色调的最佳颜色分配,从而最大限度地减少感知误差[1]。将该模型应用于三个和四个聚簇点颜色半色调的叠加,得出这种颜色分配对图像质量有重要影响的结论。此外,对于不同的着色剂吸收值组合,其对应的最佳配色也不同。因此,在本文中,我们建议根据图像的局部颜色和内容在图像中应用不同的颜色分配。如果图像内容局部具有高度的颜色和纹理变化,则由于半色调导致的伪影将不如图像平滑区域中的伪影那么明显。因此,本文的重点是检测图像的平滑区域,并在这些区域应用最佳的颜色分配。为了检测图像的光滑区域,决定根据内容的颜色对图像进行分割。我们使用了著名的K-means聚类算法以及边缘检测算法来将图像分割成簇。然后,我们使用基于hvs的空间色模型对四个半色调进行叠加,以便在特定集群中搜索最佳颜色分配。这种方法主要是针对大的平滑区域的高质量渲染,特别是包含重要记忆颜色的区域,如肤色。我们认为,内容颜色依赖筛选可以在开发高质量的印刷彩色图像中发挥重要作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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