Acquisition of Color Reproduction Technique based on Deep Learning Using a Database of Color-converted Images in the Printing Industry

IF 0.6 4区 计算机科学 Q4 IMAGING SCIENCE & PHOTOGRAPHIC TECHNOLOGY Journal of Imaging Science and Technology Pub Date : 2023-09-01 DOI:10.2352/j.imagingsci.technol.2023.67.5.050402
Ikumi Hirose, Ryosuke Yabe, Toshiyuki Inoue, Koushi Hashimoto, Yoshikatsu Arizono, Kazunori Harada, Vinh-Tiep Nguyen, Thanh Duc Ngo, Duy-Dinh Le, Norimichi Tsumura
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Abstract

Color-space conversion technology is important to output accurate colors on different devices. In particular, CMYK (Cyan, Magenta, Yellow and Key plate) used by printers has a limited range of representable colors compared with RGB (Red, Green and Blue) used for normal images. This leads to the problem of loss of color information when printing. When an RGB image captured by a camera is printed as is, colors outside the CMYK gamut are degraded, and colors that differ significantly from the actual image may be output. Therefore, printers and other companies manually correct color tones before printing. This process is based on empirical know-how and human sensitivity and has not yet been automated by machines. Therefore, this study aims to automate color correction in color-space conversion from RGB to CMYK. Specifically, we use machine learning, utilising a large color-conversion database owned by printing companies, which has been cultivated through past correction work, to learn the color-correction techniques of skilled workers. This reduces the burden on the part of the work that has been done manually, and leads to increased efficiency. In addition, the machine can compensate for some of the empirical know-how, which is expected to simplify the transfer of skills. Quantitative and qualitative evaluation results show the effectiveness of the proposed method for automatic color correction.
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基于深度学习的印刷行业彩色转换图像数据库色彩再现技术获取
色彩空间转换技术对于在不同设备上输出准确的色彩非常重要。特别是,与用于正常图像的RGB(红、绿、蓝)相比,打印机使用的CMYK(青色、品红、黄色和键版)具有有限的可表示颜色范围。这就导致了印刷时颜色信息丢失的问题。当相机捕获的RGB图像按原样打印时,CMYK色域以外的颜色会被降级,并且可能输出与实际图像明显不同的颜色。因此,印刷商和其他公司在印刷前手动校正色调。这一过程是基于经验知识和人的敏感性,尚未被机器自动化。因此,本研究旨在实现RGB到CMYK色彩空间转换过程中的色彩自动校正。具体来说,我们使用机器学习,利用印刷公司拥有的大型颜色转换数据库,通过过去的校正工作培养,学习熟练工人的颜色校正技术。这减少了手工完成的部分工作的负担,并提高了效率。此外,机器可以弥补一些经验知识,这有望简化技能转移。定量和定性评价结果表明了该方法的有效性。
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来源期刊
Journal of Imaging Science and Technology
Journal of Imaging Science and Technology 工程技术-成像科学与照相技术
CiteScore
2.00
自引率
10.00%
发文量
45
审稿时长
>12 weeks
期刊介绍: Typical issues include research papers and/or comprehensive reviews from a variety of topical areas. In the spirit of fostering constructive scientific dialog, the Journal accepts Letters to the Editor commenting on previously published articles. Periodically the Journal features a Special Section containing a group of related— usually invited—papers introduced by a Guest Editor. Imaging research topics that have coverage in JIST include: Digital fabrication and biofabrication; Digital printing technologies; 3D imaging: capture, display, and print; Augmented and virtual reality systems; Mobile imaging; Computational and digital photography; Machine vision and learning; Data visualization and analysis; Image and video quality evaluation; Color image science; Image archiving, permanence, and security; Imaging applications including astronomy, medicine, sports, and autonomous vehicles.
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