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Deep Multi Depth Panoramas for View Synthesis

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arxiv 2008.01815 v1 pith:CNV6EWTU submitted 2020-08-04 cs.CV cs.GR

Deep Multi Depth Panoramas for View Synthesis

classification cs.CV cs.GR
keywords viewpanoramaspreviousscenesynthesiscircdatadeep
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We propose a learning-based approach for novel view synthesis for multi-camera 360$^{\circ}$ panorama capture rigs. Previous work constructs RGBD panoramas from such data, allowing for view synthesis with small amounts of translation, but cannot handle the disocclusions and view-dependent effects that are caused by large translations. To address this issue, we present a novel scene representation - Multi Depth Panorama (MDP) - that consists of multiple RGBD$\alpha$ panoramas that represent both scene geometry and appearance. We demonstrate a deep neural network-based method to reconstruct MDPs from multi-camera 360$^{\circ}$ images. MDPs are more compact than previous 3D scene representations and enable high-quality, efficient new view rendering. We demonstrate this via experiments on both synthetic and real data and comparisons with previous state-of-the-art methods spanning both learning-based approaches and classical RGBD-based methods.

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