Learning Human-Object Interaction for 3D Human Pose Estimation from LiDAR Point Clouds
arXiv cs.CV / 3/18/2026
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Key Points
- The paper proposes a Human-Object Interaction Learning (HOIL) framework to improve 3D human pose estimation from LiDAR point clouds by leveraging human-object interactions to mitigate spatial ambiguity and class imbalance in interaction regions.
- It introduces HOICL, a human-object interaction-aware contrastive learning module that enhances feature discrimination between human and object points, especially where interactions occur.
- It introduces CPPool, a contact-aware part-guided pooling mechanism that adaptively reallocates representation capacity by compressing overrepresented non-interacting points while preserving informative points from interacting body parts.
- It also offers an optional contact-based temporal refinement that uses contact cues over time to refine per-frame keypoint estimates; code will be released.



