Extensive Study on Color and Light Translation of 2D Images using Machine Learning Approaches

Jyoti Ranjan Labh, R. Dwivedi
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Abstract

For machine learning applications, digital image production provides for the efficient generation of huge volumes of training data while preserving control over the generation process to ensure the optimal content distribution and variation. Synthetic data has the potential to become an important element of the training pipeline as the demand for deep learning applications grows. Over the last decade, a broad range of strategies for producing training data have been presented. The collecting of these for comparison and categorization is required for future improvement. This study presents a complete list of available visual machine learning image synthesis approaches. In the context of 2D picture production, these are classed as light transfer and colour transfer. The focus is on the computational features of approaches for developing machine learning colour transfer between image-to-image translation in the future. Finally, the learning potential of each approach is assessed based on its reported quality and performance. The study is meant to serve as a complete reference for both data and application developers. This is a comprehensive list of all the methods and approaches discussed in this page.
利用机器学习方法对二维图像的颜色和光转换进行广泛研究
对于机器学习应用,数字图像制作提供了大量训练数据的高效生成,同时保留了对生成过程的控制,以确保最佳的内容分布和变化。随着深度学习应用需求的增长,合成数据有可能成为培训管道的重要元素。在过去十年中,提出了一系列广泛的编制训练数据的战略。为了将来的改进,需要收集这些数据进行比较和分类。这项研究提出了一个完整的列表,可用的视觉机器学习图像合成方法。在2D图像制作的背景下,这些被归类为光转移和色彩转移。重点是在未来开发图像到图像翻译之间的机器学习颜色转移方法的计算特征。最后,每种方法的学习潜力是根据其报告的质量和性能来评估的。该研究旨在为数据和应用程序开发人员提供完整的参考。这是本页讨论的所有方法和途径的综合列表。
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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