Chen Yeyao, Jiang Gangyi, Yu Mei, Xu Haiyong, Ho Yo-Sung
IEEE Trans Vis Comput Graph. 2023 Oct;29(10):4183-4197. doi: 10.1109/TVCG.2022.3184047. Epub 2023 Sep 1.
Light field (LF) imaging expands traditional imaging techniques by simultaneously capturing the intensity and direction information of light rays, and promotes many visual applications. However, owing to the inherent trade-off between the spatial and angular dimensions, LF images acquired by LF cameras usually suffer from low spatial resolution. Many current approaches increase the spatial resolution by exploring the four-dimensional (4D) structure of the LF images, but they have difficulties in recovering fine textures at a large upscaling factor. To address this challenge, this paper proposes a new deep learning-based LF spatial super-resolution method using heterogeneous imaging (LFSSR-HI). The designed heterogeneous imaging system uses an extra high-resolution (HR) traditional camera to capture the abundant spatial information in addition to the LF camera imaging, where the auxiliary information from the HR camera is utilized to super-resolve the LF image. Specifically, an LF feature alignment module is constructed to learn the correspondence between the 4D LF image and the 2D HR image to realize information alignment. Subsequently, a multi-level spatial-angular feature enhancement module is designed to gradually embed the aligned HR information into the rough LF features. Finally, the enhanced LF features are reconstructed into a super-resolved LF image using a simple feature decoder. To improve the flexibility of the proposed method, a pyramid reconstruction strategy is leveraged to generate multi-scale super-resolution results in one forward inference. The experimental results show that the proposed LFSSR-HI method achieves significant advantages over the state-of-the-art methods in both qualitative and quantitative comparisons. Furthermore, the proposed method preserves more accurate angular consistency.
光场(LF)成像通过同时捕获光线的强度和方向信息扩展了传统成像技术,并推动了许多视觉应用。然而,由于空间和角度维度之间固有的权衡,LF相机获取的LF图像通常空间分辨率较低。当前许多方法通过探索LF图像的四维(4D)结构来提高空间分辨率,但它们在以大的放大因子恢复精细纹理方面存在困难。为应对这一挑战,本文提出了一种基于深度学习的新型异质成像LF空间超分辨率方法(LFSSR-HI)。所设计的异质成像系统除了使用LF相机成像外,还使用一个额外的高分辨率(HR)传统相机来捕获丰富的空间信息,其中利用来自HR相机的辅助信息对LF图像进行超分辨率处理。具体而言,构建了一个LF特征对齐模块来学习4D LF图像与2D HR图像之间的对应关系以实现信息对齐。随后,设计了一个多级空间-角度特征增强模块,将对齐后的HR信息逐步嵌入到粗糙的LF特征中。最后,使用一个简单的特征解码器将增强后的LF特征重建为超分辨率LF图像。为提高所提方法的灵活性,利用金字塔重建策略在一次前向推理中生成多尺度超分辨率结果。实验结果表明,所提的LFSSR-HI方法在定性和定量比较中均比现有方法具有显著优势。此外,所提方法保留了更准确的角度一致性。