Prior-less 3D Human Shape Reconstruction with an Earth Mover's Distance Informed CNN

Prior-less 3D Human Shape Reconstruction with an Earth Mover's Distance Informed CNN

Abstract

We propose a novel end-to-end deep learning framework, capable of 3D human shape reconstruction from a 2D image without the need of a 3D prior parametric model. We employ a "prior-less" representation of the human shape using unordered point clouds. Due to the lack of prior information, comparing the generated and ground truth point clouds to evaluate the reconstruction error is challenging. We solve this problem by proposing an Earth Mover’s Distance (EMD) function to find the optimal mapping between point clouds. Our experimental results show that we are able to obtain a visually accurate estimation of the 3D human shape from a single 2D image, with some inaccuracy for heavily occluded parts.

Publication

Prior-less 3D Human Shape Reconstruction with an Earth Mover's Distance Informed CNN by Daniel Organisciak, Chirine Riachy, Nauman Aslam and Hubert P. H. Shum in 2019
Proceedings of the 2019 International Conference on Motion, Interaction and Games (MIG) Posters

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