In image editing, the most common task is pasting objects from one image to the other and then eventually adjusting the manifestation of the foreground object with the background object. This task is called image compositing. But image compositing is a challenging problem that requires professional editing skills and a considerable amount of time. Not only these professionals are expensive to hire, but the tools (like Adobe Photoshop) used for doing such tasks are also expensive to purchase making the overall task of image compositing difficult for people without this skillset. In this work, we aim to cater to this problem by making composite images look realistic. To achieve this, we are using Generative Adversarial Networks (GANS). By training the network with a diverse range of filters applied to the images and special loss functions, the model is able to decode the color histogram of the foreground and background part of the image and also learns to blend the foreground object with the background. The hue and saturation values of the image play an important role as discussed in this paper. To the best of our knowledge, this is the first work that uses GANs for the task of image compositing. Currently, there is no benchmark dataset available for image compositing. So we created the dataset and will also make the dataset publicly available for benchmarking. Experimental results on this dataset show that our method outperforms all current state-of-the-art methods.
翻译:在图像编辑中,最常见的任务是用背景对象将图像从一个图像粘贴到另一个图像,然后最终调整前景对象的表现形式。这个任务被称为图像合成。但是图像合成是一个具有挑战性的问题,需要专业编辑技巧和大量时间。不仅这些专业人员需要花费昂贵才能雇用,而且用于完成这些任务的工具(如Adobe Photoshop)也非常昂贵,以购买使没有此技能的人难以对图像进行构造的总任务。在这项工作中,我们的目标是通过使复合图像看起来现实来解决这个问题。为了实现这一目标,我们正在使用General Adversarial 网络(GANS) 。通过对网络进行各种用于图像和特殊损失功能的过滤器培训,这个网络就是一个具有挑战性的问题。模型能够解码用于完成这些任务的工具(如 Adobe Photoshopshopsh) 和用于完成这些任务的工具(如 Adobepho Photo) 的颜色图像, 并且学会将表面对象对象对象与背景混在一起。图像的光和饱和光度值值值值在本文中扮演着一个重要的角色。为了最佳的知识,这是我们当前图像的模型的模型中可以使用的方法, 的模型数据模型将显示的模型的模型的数据将显示。