Single-to-Dual-View Adaptation for Egocentric 3D Hand Pose Estimation
Ruicong Liu, Takehiko Ohkawa, Mingfang Zhang, Yoichi Sato

TL;DR
This paper introduces S2DHand, an unsupervised method that adapts single-view 3D hand pose estimators to dual-view settings without requiring multi-view annotations or fixed camera parameters, improving accuracy and versatility.
Contribution
The paper presents a novel unsupervised adaptation approach for dual-view hand pose estimation that works with arbitrary camera pairs and unknown parameters, unlike prior methods.
Findings
Significant accuracy improvements on various camera pairs
Effective cross-dataset generalization
Outperforms existing adaptation methods
Abstract
The pursuit of accurate 3D hand pose estimation stands as a keystone for understanding human activity in the realm of egocentric vision. The majority of existing estimation methods still rely on single-view images as input, leading to potential limitations, e.g., limited field-of-view and ambiguity in depth. To address these problems, adding another camera to better capture the shape of hands is a practical direction. However, existing multi-view hand pose estimation methods suffer from two main drawbacks: 1) Requiring multi-view annotations for training, which are expensive. 2) During testing, the model becomes inapplicable if camera parameters/layout are not the same as those used in training. In this paper, we propose a novel Single-to-Dual-view adaptation (S2DHand) solution that adapts a pre-trained single-view estimator to dual views. Compared with existing multi-view training…
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Taxonomy
TopicsHuman Pose and Action Recognition · Advanced Vision and Imaging · Hand Gesture Recognition Systems
