ProPLIKS: Probablistic 3D human body pose estimation
We present a novel approach for 3D human pose estimation by employing probabilistic modeling. This approach leverages the advantages of normalizing flows in non-Euclidean geometries to address uncertain poses. Specifically, our method employs normalizing flow tailored to the SO(3) rotational group,...
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Zusammenfassung: | We present a novel approach for 3D human pose estimation by employing
probabilistic modeling. This approach leverages the advantages of normalizing
flows in non-Euclidean geometries to address uncertain poses. Specifically, our
method employs normalizing flow tailored to the SO(3) rotational group,
incorporating a coupling mechanism based on the M\"obius transformation. This
enables the framework to accurately represent any distribution on SO(3),
effectively addressing issues related to discontinuities. Additionally, we
reinterpret the challenge of reconstructing 3D human figures from 2D
pixel-aligned inputs as the task of mapping these inputs to a range of probable
poses. This perspective acknowledges the intrinsic ambiguity of the task and
facilitates a straightforward integration method for multi-view scenarios. The
combination of these strategies showcases the effectiveness of probabilistic
models in complex scenarios for human pose estimation techniques. Our approach
notably surpasses existing methods in the field of pose estimation. We also
validate our methodology on human pose estimation from RGB images as well as
medical X-Ray datasets. |
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DOI: | 10.48550/arxiv.2412.04665 |