Bridge the Gap Between Model-based and Model-free Human Reconstruction
- URL: http://arxiv.org/abs/2106.06313v1
- Date: Fri, 11 Jun 2021 11:13:42 GMT
- Title: Bridge the Gap Between Model-based and Model-free Human Reconstruction
- Authors: Lixiang Lin and Jianke Zhu
- Abstract summary: We present an end-to-end neural network that simultaneously predicts the pixel-aligned implicit surface and the explicit mesh model built by graph convolutional neural network.
Experiments on DeepHuman dataset showed that our approach is effective.
- Score: 10.818838437018682
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: It is challenging to directly estimate the geometry of human from a single
image due to the high diversity and complexity of body shapes with the various
clothing styles. Most of model-based approaches are limited to predict the
shape and pose of a minimally clothed body with over-smoothing surface.
Although capturing the fine detailed geometries, the model-free methods are
lack of the fixed mesh topology. To address these issues, we propose a novel
topology-preserved human reconstruction approach by bridging the gap between
model-based and model-free human reconstruction. We present an end-to-end
neural network that simultaneously predicts the pixel-aligned implicit surface
and the explicit mesh model built by graph convolutional neural network.
Moreover, an extra graph convolutional neural network is employed to estimate
the vertex offsets between the implicit surface and parametric mesh model.
Finally, we suggest an efficient implicit registration method to refine the
neural network output in implicit space. Experiments on DeepHuman dataset
showed that our approach is effective.
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