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H4D: Human 4D Modeling by Learning Neural Compositional Representation

Boyan Jiang, Yinda Zhang, Xingkui Wei, Xiangyang Xue, Yanwei Fu

20222022 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)20 citationsDOI

Abstract

Despite the impressive results achieved by deep learning based 3D reconstruction, the techniques of directly learning to model 4D human captures with detailed geometry have been less studied. This work presents a novel framework that can effectively learn a compact and compositional representation for dynamic human by exploiting the human body prior from the widely used SMPL parametric model. Particularly, our representation, named H4D, represents a dynamic 3D human over a temporal span with the SMPL parameters of shape and initial pose, and latent codes encoding motion and auxiliary information. A simple yet effective linear motion model is proposed to provide a rough and regularized motion estimation, followed by perframe compensation for pose and geometry details with the residual encoded in the auxiliary code. Technically, we introduce novel GRU-based architectures to facilitate learning and improve the representation capability. Extensive experiments demonstrate our method is not only efficacy in recovering dynamic human with accurate motion and detailed geometry, but also amenable to various 4D human related tasks, including motion retargeting, motion completion and future prediction.

Topics & Concepts

RetargetingComputer scienceRepresentation (politics)Artificial intelligenceMotion (physics)Motion captureEncoding (memory)Computer visionMotion compensationParametric statisticsMotion estimationCode (set theory)Machine learningMathematicsSet (abstract data type)StatisticsProgramming languagePolitical sciencePoliticsLawHuman Pose and Action Recognition3D Shape Modeling and AnalysisAdvanced Vision and Imaging
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