High-Fidelity Light Field Reconstruction Method Using View-Selective Angular Feature Extraction.

IEEE Access(2023)

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摘要
Deep learning (DL) provides an effective approach for light field (LF) reconstruction that aims to synthesize novel views from sparsely-sampled views. However, it is challenging to address domain asymmetry when adopting spatial-angular interaction LF reconstruction methods. To overcome this problem, a view-selective angular feature extraction block (VS-LFAFE) is proposed to obtain full-resolution angular features that enumerate whole viewpoints in a macropixel. By applying the VS-LFAFE, a novel LF reconstruction method is proposed, consisting of two subblocks: a spatial-angular feature extraction and fusion block, and an angular upsampling block. Experimental results demonstrate the effectiveness of the VS-LFAFE, and validate that the proposed method can achieve superior performance compared with the state-of-the-art methods.
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关键词
Feature extraction, Image reconstruction, Convolutional neural networks, Reconstruction algorithms, Estimation, Spatial resolution, Interpolation, Light field reconstruction, light field imaging, view-selective angular feature, convolutional neural network
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