为多道印刷优化图案分区:PARAOMASKING.

Utpal Sarkar;Héctor Gómez;Ján Morovič;Peter Morovič
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引用次数: 0

摘要

在半色调驱动的成像流水线中,半色调图案设计通常是影响整体输出质量的主要因素。然而,对于连续或累积成像技术(如多道印刷)而言,图案分割也是一个重要因素,即如何在不同的局部成像事件(如印刷道)中分割整体半色调图案。分区的设计通常与半色调图案无关,因此不可能对半色调和分区的共同效果进行优化。然而,即使有好的半色调图案和好的分区方案,也不能保证半色调分区良好,而且还会影响图像质量属性。本文提出了一种名为 PARAOMASKING 的新方法,它得益于 PARAWACS 半色调的图案确定性,并为多道印刷提出了一种分区方案,从而使分区半色调也能达到最佳效果。数字和印刷结果表明,它可以显著提高局部图案质量和整体图案质量。因此,颗粒、凝聚和图案稳健性等输出属性都得到了改善。这里的重点是蓝噪图案的保存,但该方法也可扩展到其他目标,例如最大化每次聚类。
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Optimized Pattern Partitioning for Multi-Pass Printing: PARAOMASKING
In halftone-driven imaging pipelines focus is often placed on halftone pattern design as the main contributor to overall output quality. However, for sequential or cumulative imaging technologies, such as multi-pass printing, an important element is also pattern partitioning – how the overall halftone pattern is divided among the different partial imaging events such as printing passes. Partitioning is usually designed agnostically of the halftone pattern, making it impossible to optimize for the joint effect of halftone and partitioning. However, even a good halftone pattern coupled with a good partitioning scheme does not guarantee well partitioned halftones and can impact image quality attributes. In this paper a novel approach called PARAOMASKING is presented that benefits from the pattern-determinism of PARAWACS halftoning and proposes a partitioning scheme for multi-pass printing such that optimality is also obtained for partitioned halftones. Results – both digital and printed – show how it can lead to significant improvements in partial pattern quality and overall pattern quality. Consequently, output attributes such as grain, coalescence and pattern robustness are improved. The focus here is on blue-noise pattern preservation but the approach can also be extended to other objectives, e.g., maximizing per-pass clustering.
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