Monochromatic Image Colorization using Machine Learning

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Abstract

The introduction of Artificial intelligence has opened doors to many automatic, unsupervised learning trends, which help to translate and acknowledge data. During the past years, the procedure of colorization of monochrome images has been greater or greater in several application fields, like restoration of old images or degraded images, and also, storage of monochrome images is more efficient when compared to colored images. This issue is not excessively presented because of an extremely high likelihood of conceivable outcomes during the designation of varied subtleties to the picture. A considerable lot of the new advancements in colorization have pictures with a normal format or exceptionally refined information, like semantic guides as the info. In the proposed system we are making use of Generative Adversarial Network (GAN). The final outcome is compared between the traditional deep neural network and the generative Model
使用机器学习的单色图像着色
人工智能的引入为许多自动、无监督的学习趋势打开了大门,这些趋势有助于翻译和识别数据。近年来,单色图像的彩色化程序在旧图像或退化图像的恢复等多个应用领域得到了越来越大的发展,而且单色图像的存储效率也比彩色图像高。这个问题没有被过度提出,因为在对图像进行各种微妙的指定期间,可以想象的结果的可能性非常高。在着色方面有相当多的新进展,它们的图片具有正常格式或非常精细的信息,如语义指南作为信息。在提出的系统中,我们使用了生成对抗网络(GAN)。最后将传统深度神经网络与生成模型进行了比较
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