光场超分辨率调查

IF 3.2 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
Mingyuan Zhao , Hao Sheng , Da Yang , Sizhe Wang , Ruixuan Cong , Zhenglong Cui , Rongshan Chen , Tun Wang , Shuai Wang , Yang Huang , Jiahao Shen
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引用次数: 0

摘要

与二维成像数据相比,四维光场(LF)数据保留了更丰富的场景结构信息,可显著提高计算机的感知能力,包括深度估计、语义分割和 LF 渲染。然而,在 LF 图像采集期间,空间分辨率和角度分辨率之间存在矛盾。为了克服上述问题,研究人员逐渐将目光投向了光场超分辨率(LFSR)。在传统解决方案中,研究人员基于贝叶斯模型和高斯模型等各种优化框架实现了 LFSR。与传统方法相比,基于深度学习的方法具有更好的性能和更强大的泛化能力,因此更受欢迎。在本文中,目前的方法主要分为传统方法和基于深度学习的方法。我们分别在光场空间超分辨率(LFSSR)、光场角度超分辨率(LFASR)和光场空间与角度超分辨率(LFSASR)中讨论这两个分支。随后,本文还介绍了主要的公共数据集,并分析了这些数据集上常用方法的性能。最后,我们讨论了 LFSR 的潜在创新,以提出我们研究领域的进展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A survey for light field super-resolution

Compared to 2D imaging data, the 4D light field (LF) data retains richer scene’s structure information, which can significantly improve the computer’s perception capability, including depth estimation, semantic segmentation, and LF rendering. However, there is a contradiction between spatial and angular resolution during the LF image acquisition period. To overcome the above problem, researchers have gradually focused on the light field super-resolution (LFSR). In the traditional solutions, researchers achieved the LFSR based on various optimization frameworks, such as Bayesian and Gaussian models. Deep learning-based methods are more popular than conventional methods because they have better performance and more robust generalization capabilities. In this paper, the present approach can mainly divided into conventional methods and deep learning-based methods. We discuss these two branches in light field spatial super-resolution (LFSSR), light field angular super-resolution (LFASR), and light field spatial and angular super-resolution (LFSASR), respectively. Subsequently, this paper also introduces the primary public datasets and analyzes the performance of the prevalent approaches on these datasets. Finally, we discuss the potential innovations of the LFSR to propose the progress of our research field.

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