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A Skeleton-Driven Neural Occupancy Representation for Articulated Hands

Korrawe Karunratanakul, Adrian Spurr, Zicong Fan, Otmar Hilliges, Siyu Tang

20212021 International Conference on 3D Vision (3DV)55 citationsDOIOpen Access PDF

Abstract

We present Hand ArticuLated Occupancy (HALO), a novel representation of articulated hands that bridges the advantages of 3D keypoints and neural implicit surfaces and can be used in end-to-end trainable architectures. Unlike existing statistical parametric hand models (e.g. MANO), HALO directly leverages the 3D joint skeleton as input and produces a neural occupancy volume representing the posed hand surface. The key benefits of HALO are (1) it is driven by 3D keypoints, which have benefits in terms of accuracy and are easier to learn for neural networks than the latent hand-model parameters; (2) it provides a differentiable volumetric occupancy representation of the posed hand, (3) it can be trained end-to-end, allowing the formulation of losses on the hand surface that benefit the learning of 3D keypoints. We demonstrate the applicability of HALO to the task of conditional generation of hands that grasp 3D objects. The differentiable nature of HALO is shown to improve the quality of the synthesized hands both in terms of physical plausibility and user preference.

Topics & Concepts

Computer scienceHaloArtificial intelligenceRepresentation (politics)Parametric statisticsOccupancyGRASPiCubComputer visionRobotMathematicsHumanoid robotEngineeringQuantum mechanicsGalaxyLawPolitical scienceStatisticsArchitectural engineeringProgramming languagePoliticsPhysicsHuman Pose and Action Recognition3D Shape Modeling and AnalysisRobot Manipulation and Learning
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