The 360{\deg}imaging has recently gained great attention; however, its angular resolution is relatively lower than that of a narrow field-of-view (FOV) perspective image as it is captured by using fisheye lenses with the same sensor size. Therefore, it is beneficial to super-resolve a 360{\deg}image. Some attempts have been made but mostly considered the equirectangular projection (ERP) as one of the way for 360{\deg}image representation despite of latitude-dependent distortions. In that case, as the output high-resolution(HR) image is always in the same ERP format as the low-resolution (LR) input, another information loss may occur when transforming the HR image to other projection types. In this paper, we propose SphereSR, a novel framework to generate a continuous spherical image representation from an LR 360{\deg}image, aiming at predicting the RGB values at given spherical coordinates for super-resolution with an arbitrary 360{\deg}image projection. Specifically, we first propose a feature extraction module that represents the spherical data based on icosahedron and efficiently extracts features on the spherical surface. We then propose a spherical local implicit image function (SLIIF) to predict RGB values at the spherical coordinates. As such, SphereSR flexibly reconstructs an HR image under an arbitrary projection type. Experiments on various benchmark datasets show that our method significantly surpasses existing methods.
翻译:360=deg}图像最近引起了极大注意; 然而,它的角分辨率相对低于通过使用相同传感器尺寸的鱼眼镜镜镜来捕捉的狭窄视野图像。 因此, 它有利于超级解析360=deg}图像。 一些尝试已经做出, 但大多认为等离子形投影(ERP)是360=deg}图像的一种方式, 尽管有偏向性扭曲。 在这种情况下, 当输出高分辨率图像总是以与低分辨率输入相同的企业资源规划(FOV)格式时, 当将HR图像转换为其他投影类型时, 可能会出现另一种信息损失。 在此文件中, 我们提出 SphereSR, 这是一个新的框架, 用来从一个LR360=deg}图像生成连续的球形图像, 目的是在给定的球形坐标坐标上预测RGB值, 并带有任意360=deg}iming 投影。 具体地, 我们首先提议一个功能提取模块化模块的模块模块, 以我们现有的直径直径直径直径直径直径直径直径直径直径直径直径直径直径直径直径直径的图像。