Artificial Intelligent approach for Colorful Image Colorization Using a DCNN

A. V. Rao, S. Vishwakarma, Shakti Kundu
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Abstract

Coloring grayscale photos manually or using traditional coloring methods takes extensive user interaction. This may involve applying many colored scribbles, viewing related images, or doing segmentation. Even the most sophisticated software available in this day and age can take up to a month to color an image that was originally black and white. This occurs because the image contains a wide variety of color tones and tints. In this research work, we offer an innovative method for colorizing grayscale photographs that use deep learning techniques. First, we can separate the subject matter and aesthetic of several images and then recombine them into a single image by using a pre-trained convolutional neural network that was first developed for image categorization. Following this, we present an approach that may colorize a black-and-white image by combining the content of the black-and-white image with the style of a color image that has semantic similarities with the black-and-white image.
基于DCNN的彩色图像着色的人工智能方法
手动为灰度照片上色或使用传统的上色方法需要大量的用户交互。这可能涉及应用许多彩色涂鸦,查看相关图像或进行分割。即使是当今最先进的软件也要花一个月的时间才能将原本是黑白的图像上色。这是因为图像包含各种各样的色调和色调。在这项研究工作中,我们提供了一种使用深度学习技术为灰度照片上色的创新方法。首先,我们可以分离几张图像的主题和美学,然后通过使用最初为图像分类而开发的预训练卷积神经网络将它们重新组合成一张图像。在此之后,我们提出了一种方法,通过将黑白图像的内容与与黑白图像具有语义相似性的彩色图像的风格相结合,使黑白图像着色。
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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