End-To-End Cad Model Retrieval And 9dof Alignment In 3d Scans

2019 IEEE/CVF INTERNATIONAL CONFERENCE ON COMPUTER VISION (ICCV 2019)(2019)

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摘要
We present a novel, end-to-end approach to align CAD models to an 3D scan of a scene, enabling transformation of a noisy, incomplete 3D scan to a compact, CAD reconstruction with clean, complete object geometry. Our main contribution lies in formulating a differentiable Procrustes alignment that is paired with a symmetry-aware dense object correspondence prediction. To simultaneously align CAD models to all the objects of a scanned scene, our approach detects object locations, then predicts symmetry-aware dense object correspondences between scan and CAD geometry in a unified object space, as well as a nearest neighbor CAD model, both of which are then used to inform a differentiable Procrustes alignment. Our approach operates in a fully-convolutional fashion, enabling alignment of CAD models to the objects of a scan in a single forward pass. This enables our method to outperform state-of-the-art approaches by 19.04% for CAD model alignment to scans, with approximate to 250x faster runtime than previous data-driven approaches.
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关键词
end-to-end CAD model retrieval,9DoF alignment,CAD reconstruction,object geometry,differentiable Procrustes alignment,symmetry-aware dense object correspondence prediction,scanned scene,object locations,CAD geometry,unified object space,nearest neighbor CAD model,CAD model alignment,data-driven approaches,3D scans
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