Leveraging 2D Masked Reconstruction for Domain Adaptation of 3D Pose Estimation
- URL: http://arxiv.org/abs/2501.08408v1
- Date: Tue, 14 Jan 2025 19:56:43 GMT
- Title: Leveraging 2D Masked Reconstruction for Domain Adaptation of 3D Pose Estimation
- Authors: Hansoo Park, Chanwoo Kim, Jihyeon Kim, Hoseong Cho, Nhat Nguyen Bao Truong, Taehwan Kim, Seungryul Baek,
- Abstract summary: RGB-based 3D pose estimation methods have been successful with the development of deep learning.
Most existing methods do not operate well for testing images whose distribution is far from that of training data.
In this paper, we introduce an unsupervised domain adaptation framework for 3D pose estimation.
- Score: 8.365430750061506
- License:
- Abstract: RGB-based 3D pose estimation methods have been successful with the development of deep learning and the emergence of high-quality 3D pose datasets. However, most existing methods do not operate well for testing images whose distribution is far from that of training data. However, most existing methods do not operate well for testing images whose distribution is far from that of training data. This problem might be alleviated by involving diverse data during training, however it is non-trivial to collect such diverse data with corresponding labels (i.e. 3D pose). In this paper, we introduced an unsupervised domain adaptation framework for 3D pose estimation that utilizes the unlabeled data in addition to labeled data via masked image modeling (MIM) framework. Foreground-centric reconstruction and attention regularization are further proposed to increase the effectiveness of unlabeled data usage. Experiments are conducted on the various datasets in human and hand pose estimation tasks, especially using the cross-domain scenario. We demonstrated the effectiveness of ours by achieving the state-of-the-art accuracy on all datasets.
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