基于光场角超分辨率的多层协同视图重建网络研究

Deyang Liu, Yifan Mao, Xiaofei Zhou, P. An, Yuming Fang
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引用次数: 0

摘要

近年来,人们提出了许多方法来提高稀疏采样光场(LF)的角分辨率。然而,合成的密集LF不可避免地呈现出模糊的边缘和伪影。本文拟通过学习多层协同视图重建网络,对LF视图与质量退化模型的全局关系进行建模,以进一步提高LF角度超分辨率(SR)性能。提出的低频角SR网络由三个子网络组成,包括合作角变压器网络(CATNet)、去模糊网络(DBNet)和纹理修复网络(TRNet)。CATNet同时捕获所有LF视图的全局特征和每个视图中的局部特征,这有利于描述LF的固有结构。DBNet通过估计模糊核来建立质量退化模型,以减少模糊边缘和伪影。TRNet专注于恢复精细尺度的纹理细节。在包括大型基线LF图像在内的各种LF数据集上的实验结果表明,与最先进的方法相比,我们的方法具有显著的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning a Multilevel Cooperative View Reconstruction Network for Light Field Angular Super-Resolution
Recently, many methods have been proposed to improve the angular resolution of sparsely-sampled Light Field (LF). However, the synthesized dense LF inevitably exhibits blurry edges and artifacts. This paper intents to model the global relations of LF views and quality degradation model by learning a multilevel cooperative view reconstruction network to further enhance LF angular Super-Resolution (SR) performance. The proposed LF angular SR network consists of three sub-networks including the Cooperative Angular Transformer Network (CATNet), the Deblurring Network (DBNet), and the Texture Repair Network (TRNet). The CATNet simultaneously captures global features of all LF views and local features within each view, which benefits in characterizing the inherent LF structure. The DBNet models a quality degradation model by estimating blur kernels to reduce the blurry edges and artifacts. The TRNet focuses on restoring fine-scale texture details. Experimental results over various LF datasets including large baseline LF images demonstrate the significant superiority of our method when compared with state-of-the-art ones.
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