CVNov 22, 2022

Anatomy-guided domain adaptation for 3D in-bed human pose estimation

arXiv:2211.12193v220 citationsh-index: 36Has Code
Originality Incremental advance
AI Analysis

This work addresses the challenge of clinical applicability for monitoring systems by improving model robustness in shifted domains, though it is incremental as it builds on existing domain adaptation techniques.

The paper tackles the problem of poor generalization in 3D human pose estimation models under domain shifts by introducing a domain adaptation method that uses anatomical constraints to guide learning and filter pseudo-labels, resulting in performance improvements of 31%/66% over the baseline and reducing the domain gap by 65%/82%.

3D human pose estimation is a key component of clinical monitoring systems. The clinical applicability of deep pose estimation models, however, is limited by their poor generalization under domain shifts along with their need for sufficient labeled training data. As a remedy, we present a novel domain adaptation method, adapting a model from a labeled source to a shifted unlabeled target domain. Our method comprises two complementary adaptation strategies based on prior knowledge about human anatomy. First, we guide the learning process in the target domain by constraining predictions to the space of anatomically plausible poses. To this end, we embed the prior knowledge into an anatomical loss function that penalizes asymmetric limb lengths, implausible bone lengths, and implausible joint angles. Second, we propose to filter pseudo labels for self-training according to their anatomical plausibility and incorporate the concept into the Mean Teacher paradigm. We unify both strategies in a point cloud-based framework applicable to unsupervised and source-free domain adaptation. Evaluation is performed for in-bed pose estimation under two adaptation scenarios, using the public SLP dataset and a newly created dataset. Our method consistently outperforms various state-of-the-art domain adaptation methods, surpasses the baseline model by 31%/66%, and reduces the domain gap by 65%/82%. Source code is available at https://github.com/multimodallearning/da-3dhpe-anatomy.

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