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Semi-Supervised 3D Hand-Object Poses Estimation with Interactions in Time

Shaowei Liu, Hanwen Jiang, Jiarui Xu, Sifei Liu, Xiaolong Wang

2021167 citationsDOI

Abstract

Estimating 3D hand and object pose from a single image is an extremely challenging problem: hands and objects are often self-occluded during interactions, and the 3D annotations are scarce as even humans cannot directly label the ground-truths from a single image perfectly. To tackle these challenges, we propose a unified framework for estimating the 3D hand and object poses with semi-supervised learning. We build a joint learning framework where we perform explicit contextual reasoning between hand and object representations. Going beyond limited 3D annotations in a single image, we leverage the spatial-temporal consistency in large-scale hand-object videos as a constraint for generating pseudo labels in semi-supervised learning. Our method not only improves hand pose estimation in challenging real-world dataset, but also substantially improve the object pose which has fewer ground-truths per instance. By training with large-scale diverse videos, our model also generalizes better across multiple out-of-domain datasets. Project page and code: https://stevenlsw.github.io/Semi-Hand-Object

Topics & Concepts

Leverage (statistics)Computer scienceArtificial intelligencePoseObject (grammar)Consistency (knowledge bases)Machine learningCode (set theory)Constraint (computer-aided design)Computer visionCognitive neuroscience of visual object recognitionPattern recognition (psychology)MathematicsProgramming languageGeometrySet (abstract data type)Robot Manipulation and LearningHuman Pose and Action RecognitionHand Gesture Recognition Systems
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