We present an end-to-end deep learning framework for indoor panoramic image inpainting. Although previous inpainting methods have shown impressive performance on natural perspective images, most fail to handle panoramic images, particularly indoor scenes, which usually contain complex structure and texture content. To achieve better inpainting quality, we propose to exploit both the global and local context of indoor panorama during the inpainting process. Specifically, we take the low-level layout edges estimated from the input panorama as a prior to guide the inpainting model for recovering the global indoor structure. A plane-aware normalization module is employed to embed plane-wise style features derived from the layout into the generator, encouraging local texture restoration from adjacent room structures (i.e., ceiling, floor, and walls). Experimental results show that our work outperforms the current state-of-the-art methods on a public panoramic dataset in both qualitative and quantitative evaluations. Our code is available at https://ericsujw.github.io/LGPN-net/
翻译:我们提出了室内全景图像油漆的端到端深学习框架。虽然先前的油漆方法在自然视角图像上表现出了令人印象深刻的性能,但多数人未能处理全景图像,特别是通常包含复杂结构和纹理内容的室内场景。为了提高油漆质量,我们提议在油漆过程中利用室内全景的全球和地方背景。具体地说,我们采用输入全景估计的低水平布局边缘作为前一种指导,以指导恢复全球室内结构的油漆模型。一个平面观测正常化模块用于在发电机中嵌入由布局产生的平面风格特征,鼓励从邻近的房间结构(即天花板、地板和墙壁)中恢复当地质质。实验结果表明,我们的工作在定性和定量评价中都超越了公共全景数据集的当前状态方法。我们的代码可在https://ericsuw.github.io/LGPN-net/上查阅。