Efficient Light Field Angular Super-Resolution With Sub-Aperture Feature Learning and Macro-Pixel Upsampling

IEEE TRANSACTIONS ON MULTIMEDIA(2023)

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摘要
The acquisition of densely-sampled light field (LF) images is costly, which hampers the applications of LF imaging technology in 3D reconstruction, digital refocusing, virtual reality, etc. To mitigate the obstacle, various approaches have been proposed to reconstruct densely-sampled LF images from sparsely-sampled ones. However, most existing methods still suffer from the non-Lambertian effect and large disparity issue. In this paper, we embrace the challenges by introducing a new paradigm for LF angular super-resolution (SR), which first explores the multi-scale spatial-angular correlations on the sparse sub-aperture images (SAIs) and then performs angular SR on macro-pixel features. In this way, we propose an efficient LF angular SR network, termed as EASR, with simple 3D (2D) CNNs and reshaping operations. The proposed EASR can extract effective feature representations on SAIs and can handle large disparities well by performing angular SR on macro-pixel features. Extensive comparisons with state-of-the-art methods demonstrate that our method achieves superior performance visually and quantitatively. Furthermore, our method achieves efficient angular SR by providing an excellent tradeoff between reconstruction performance and inference time.
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关键词
Image reconstruction,Feature extraction,Three-dimensional displays,Spatial resolution,Correlation,Cameras,Superresolution,Light field,angular super-resolution,view synthesis,deep learning
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