Inpainting has been continuously studied in the field of computer vision. As artificial intelligence technology developed, deep learning technology was introduced in inpainting research, helping to improve performance. Currently, the input target of an inpainting algorithm using deep learning has been studied from a single image to a video. However, deep learning-based inpainting technology for panoramic images has not been actively studied. We propose a 360-degree panoramic image inpainting method using generative adversarial networks (GANs). The proposed network inputs a 360-degree equirectangular format panoramic image converts it into a cube map format, which has relatively little distortion and uses it as a training network. Since the cube map format is used, the correlation of the six sides of the cube map should be considered. Therefore, all faces of the cube map are used as input for the whole discriminative network, and each face of the cube map is used as input for the slice discriminative network to determine the authenticity of the generated image. The proposed network performed qualitatively better than existing single-image inpainting algorithms and baseline algorithms.
翻译:在计算机视觉领域,一直在不断研究油漆技术。随着人工智能技术的发展,在油漆研究中引入了深层次学习技术,从而帮助提高性能。目前,从一个图像到一个视频,对使用深层学习的绘画算法的输入目标进行了研究。然而,没有积极研究全方位图像的深层次基于学习的绘画技术。我们提出了一个使用基因对抗网络(GANs)的360度全方位图绘制方法。拟议的网络输入了360度半方形全方位图像,将其转换成立方图格式,其扭曲程度相对较小,并用作培训网络。自使用立方图格式以来,应当考虑立方图六边的关联性。因此,立方图的所有面都用作整个歧视网络的输入,立方图的每个面都用作切片歧视网络的输入,以确定生成图像的真实性。拟议的网络在质量上比现有的单面制算算法和基线算法还好。