Timezone: »
While deep learning reshaped the classical motion capture pipeline with feed-forward networks, generative models are required to recover fine alignment via iterative refinement. Unfortunately, the existing models are usually hand-crafted or learned in controlled conditions, only applicable to limited domains. We propose a method to learn a generative neural body model from unlabelled monocular videos by extending Neural Radiance Fields (NeRFs). We equip them with a skeleton to apply to time-varying and articulated motion. A key insight is that implicit models require the inverse of the forward kinematics used in explicit surface models. Our reparameterization defines spatial latent variables relative to the pose of body parts and thereby overcomes ill-posed inverse operations with an overparameterization. This enables learning volumetric body shape and appearance from scratch while jointly refining the articulated pose; all without ground truth labels for appearance, pose, or 3D shape on the input videos. When used for novel-view-synthesis and motion capture, our neural model improves accuracy on diverse datasets.
Author Information
Shih-Yang Su (University of British Columbia)
Frank Yu (University of British Columbia)
Michael Zollhoefer (Facebook Reality Labs)
Helge Rhodin (UBC)
More from the Same Authors
-
2022 Spotlight: Lightning Talks 6A-3 »
Junyu Xie · Chengliang Zhong · Ali Ayub · Sravanti Addepalli · Harsh Rangwani · Jiapeng Tang · Yuchen Rao · Zhiying Jiang · Yuqi Wang · Xingzhe He · Gene Chou · Ilya Chugunov · Samyak Jain · Yuntao Chen · Weidi Xie · Sumukh K Aithal · Carter Fendley · Lev Markhasin · Yiqin Dai · Peixing You · Bastian Wandt · Yinyu Nie · Helge Rhodin · Felix Heide · Ji Xin · Angela Dai · Andrew Zisserman · Bi Wang · Xiaoxue Chen · Mayank Mishra · ZHAO-XIANG ZHANG · Venkatesh Babu R · Justus Thies · Ming Li · Hao Zhao · Venkatesh Babu R · Jimmy Lin · Fuchun Sun · Matthias Niessner · Guyue Zhou · Xiaodong Mu · Chuang Gan · Wenbing Huang -
2022 Spotlight: AutoLink: Self-supervised Learning of Human Skeletons and Object Outlines by Linking Keypoints »
Xingzhe He · Bastian Wandt · Helge Rhodin -
2022 Poster: AutoLink: Self-supervised Learning of Human Skeletons and Object Outlines by Linking Keypoints »
Xingzhe He · Bastian Wandt · Helge Rhodin -
2019 Poster: Scene Representation Networks: Continuous 3D-Structure-Aware Neural Scene Representations »
Vincent Sitzmann · Michael Zollhoefer · Gordon Wetzstein -
2019 Oral: Scene Representation Networks: Continuous 3D-Structure-Aware Neural Scene Representations »
Vincent Sitzmann · Michael Zollhoefer · Gordon Wetzstein -
2018 Poster: Diversity-Driven Exploration Strategy for Deep Reinforcement Learning »
Zhang-Wei Hong · Tzu-Yun Shann · Shih-Yang Su · Yi-Hsiang Chang · Tsu-Jui Fu · Chun-Yi Lee