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Ladybird: Quasi-Monte Carlo Sampling for Deep Implicit Field Based 3D Reconstruction with Symmetry

MPS-Authors
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Fan,  Tianqi
Computer Graphics, MPI for Informatics, Max Planck Society;

/persons/resource/persons225790

Singh,  Gurprit
Computer Graphics, MPI for Informatics, Max Planck Society;

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arXiv:2007.13393.pdf
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Citation

Xu, Y., Fan, T., Yuan, Y., & Singh, G. (2020). Ladybird: Quasi-Monte Carlo Sampling for Deep Implicit Field Based 3D Reconstruction with Symmetry. Retrieved from https://arxiv.org/abs/2007.13393.


Cite as: https://hdl.handle.net/21.11116/0000-0007-CECA-E
Abstract
Deep implicit field regression methods are effective for 3D reconstruction
from single-view images. However, the impact of different sampling patterns on
the reconstruction quality is not well-understood. In this work, we first study
the effect of point set discrepancy on the network training. Based on Farthest
Point Sampling algorithm, we propose a sampling scheme that theoretically
encourages better generalization performance, and results in fast convergence
for SGD-based optimization algorithms. Secondly, based on the reflective
symmetry of an object, we propose a feature fusion method that alleviates
issues due to self-occlusions which makes it difficult to utilize local image
features. Our proposed system Ladybird is able to create high quality 3D object
reconstructions from a single input image. We evaluate Ladybird on a large
scale 3D dataset (ShapeNet) demonstrating highly competitive results in terms
of Chamfer distance, Earth Mover's distance and Intersection Over Union (IoU).