Frank Tal, Liu Jiayin, Gat Shani, Haik Oren, Mor Orel Bat, Roth Itamar, Allebach Jan P, Yitzhaky Yitzhak
IEEE Trans Image Process. 2022;31:5498-5512. doi: 10.1109/TIP.2022.3196821. Epub 2022 Aug 22.
Aperiodic, clustered-dot, halftone patterns have recently become popular for commercial printing of continuous-tone images with laser, electrophotographic presses, because of their inherent stability and resistance to moiré artifacts. Halftone screens designed using the multistage, multipass, clustered direct binary search (MS-MP-CLU-DBS) algorithm can yield halftone patterns with very high visual quality. But the characteristics of these halftone patterns depend on three input parameters for which there are no known formulas to choose their values to yield halftone patterns of a certain quality level and scale. Using machine learning methods, two predictors are developed that take as input these three parameters. One predicts the quality level of the halftone pattern. The other one predicts the scale of the halftone pattern. To provide ground truth information for training these predictors, human subjects viewed a large number of halftone patches generated from MS-MP-CLU-DBS-designed screens and assigned each patch to one of four quality levels. For each patch, the location of the peak in the radially averaged power spectrum (RAPS) is calculated as a measure of the scale or effective line frequency of the pattern. Experimental results demonstrate the accuracy of the two predictors and the effectiveness of screen design procedures based on these predictors to generate both monochrome and color high quality halftone images.
由于其固有的稳定性和对莫尔条纹伪像的抗性,非周期性、聚类点半色调图案最近在使用激光、电子照相印刷机对连续色调图像进行商业印刷中变得流行起来。使用多级、多通道、聚类直接二进制搜索(MS-MP-CLU-DBS)算法设计的半色调网屏可以产生视觉质量非常高的半色调图案。但是这些半色调图案的特性取决于三个输入参数,目前还没有已知的公式来选择它们的值以产生具有一定质量水平和比例的半色调图案。利用机器学习方法,开发了两个预测器,它们将这三个参数作为输入。一个预测半色调图案的质量水平。另一个预测半色调图案的比例。为了为训练这些预测器提供真实信息,人类受试者查看了大量由MS-MP-CLU-DBS设计的网屏生成的半色调色块,并将每个色块分配到四个质量水平之一。对于每个色块,计算径向平均功率谱(RAPS)中峰值的位置,作为图案比例或有效线频率的度量。实验结果证明了这两个预测器的准确性以及基于这些预测器的网屏设计程序生成高质量单色和彩色半色调图像的有效性。