在CNN万能机上进行实际半调色的一些方法

K. R. Crounse, T. Roska, L. Chua
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引用次数: 3

摘要

本文探讨了在CNN通用机上实际半色调情况下的两个相关问题:用小CNN阵列对大图像进行块处理,以及使用不大于3/spl次/3的模板。结果表明,通过仔细选择边界单元值,可以在没有明显边界伪影的情况下进行块处理。在本例中,使用标准的3/spl倍/3半调色模板;只有使用更大的模板才能获得更高质量的半色调。介绍了一种CNNUM算法,该算法仅使用3/spl倍/3模板,但通过迭代过程模拟更大的有效模板。该方法是将CNN暂态在时间上离散化,然后用CNN暂态在每个时间步实现空间相关性。针对单个CNN瞬态设计了a - b模板对来近似人类视觉系统的一个非常简单的线性滤波模型。对得到的离散时间系统进行了分析。迭代过程被证明可以产生视觉上令人愉悦的半色调。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Some methods for practical halftoning on the CNN universal machine
This paper explores two issues which are relevant in practical halftoning situations on the CNN universal machine: block processing of large images with small CNN arrays, and the use of no larger than 3/spl times/3 templates. It is shown that block processing can be performed without noticeable boundary artifacts by careful selection of boundary cell values. In this example, a standard 3/spl times/3 halftoning template is used; higher quality halftones can be obtained only by using larger templates. A CNNUM algorithm is introduced which uses only a 3/spl times/3 template but emulates a much larger effective template through an iterative procedure. The method is to discretize the CNN transient in time and then implement the spatial correlations at each time step with a CNN transient. An A-B-template pair was designed for a single CNN transient to approximate a very simple linear filter model of the human visual system. The resulting discrete-time system was analyzed. The iterative procedure is demonstrated to produce a visually pleasing halftone.
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