Pano Popups: Indoor 3D Reconstruction with a Plane-Aware Network
In this work we present a method to train a plane-aware convolutional neural network for dense depth and surface normal estimation as well as plane boundaries from a single indoor $360^\circ$ image. Using our proposed loss function, our network outperforms existing methods for single-view, indoor, o...
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Zusammenfassung: | In this work we present a method to train a plane-aware convolutional neural
network for dense depth and surface normal estimation as well as plane
boundaries from a single indoor $360^\circ$ image. Using our proposed loss
function, our network outperforms existing methods for single-view, indoor,
omnidirectional depth estimation and provides an initial benchmark for surface
normal prediction from $360^\circ$ images. Our improvements are due to the use
of a novel plane-aware loss that leverages principal curvature as an indicator
of planar boundaries. We also show that including geodesic coordinate maps as
network priors provides a significant boost in surface normal prediction
accuracy. Finally, we demonstrate how we can combine our network's outputs to
generate high quality 3D "pop-up" models of indoor scenes. |
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DOI: | 10.48550/arxiv.1907.00939 |