Deep Octree-based CNNs with Output-Guided Skip Connections for 3D Shape and Scene Completion
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Acquiring complete and clean 3D shape and scene data is challenging due to geometric occlusion and insufficient views during 3D capturing. We present a simple yet effective deep learning approach for completing the input noisy and incomplete shapes or scenes. Our network is built upon the octree-based CNNs (O-CNN) with U-Net like structures, which enjoys high computational and memory efficiency and supports to construct a very deep network structure for 3D CNNs. A novel output-guided skip-connection is introduced to the network structure for better preserving the input geometry and learning geometry prior from data effectively. We show that with these simple adaptions -- output-guided skip-connection and deeper O-CNN (up to 70 layers), our network achieves state-of-the-art results in 3D shape completion and semantic scene computation.
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Cited by 1 Pith paper
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CAOA -- Completion-Assisted Object-CAD Alignment
CAOA uses a completion module and symmetry loss to achieve 17% better CAD alignment accuracy on Scan2CAD, plus releases the S2C-Completion dataset of 8500 pairs.
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