Lifting 2D Human Pose to 3D with Domain Adapted 3D Body Concept
Qiang Nie, Ziwei Liu, Yunhui Liu

TL;DR
This paper introduces a domain adaptation framework that leverages 3D body concepts learned from labeled data to improve 2D-to-3D human pose lifting, reducing ambiguity and enhancing generalization, especially with unlabeled data.
Contribution
It proposes a novel domain adaptation approach that unifies supervised and semi-supervised 3D pose estimation by learning a 3D body concept to guide 2D pose lifting.
Findings
Achieves state-of-the-art performance on standard benchmarks.
Effectively reduces 2D-3D ambiguity in pose lifting.
Improves generalization by utilizing unlabeled 2D data.
Abstract
Lifting the 2D human pose to the 3D pose is an important yet challenging task. Existing 3D pose estimation suffers from 1) the inherent ambiguity between the 2D and 3D data, and 2) the lack of well labeled 2D-3D pose pairs in the wild. Human beings are able to imagine the human 3D pose from a 2D image or a set of 2D body key-points with the least ambiguity, which should be attributed to the prior knowledge of the human body that we have acquired in our mind. Inspired by this, we propose a new framework that leverages the labeled 3D human poses to learn a 3D concept of the human body to reduce the ambiguity. To have consensus on the body concept from 2D pose, our key insight is to treat the 2D human pose and the 3D human pose as two different domains. By adapting the two domains, the body knowledge learned from 3D poses is applied to 2D poses and guides the 2D pose encoder to generate…
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Taxonomy
TopicsHuman Pose and Action Recognition · Hand Gesture Recognition Systems · Human Motion and Animation
