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PhysHanDI: Physics-Based Reconstruction of Hand-Deformable Object Interactions

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While existing methods for reconstructing hand-object interactions have made impressive progress, they either focus on rigid or part-wise rigid objects-limiting their ability to model real-world objects (e.g., cloth, stuffed animals) that exhibit highly non-rigid deformations-or model deformable objects without full 3D hand reconstruction. To bridge this gap, we present PhysHanDI (Physics-based Reconstruction of Hand and Deformable Object Interactions), a framework that enables full 3D reconstruction of both interacting hands and non-rigid objects. Our key idea is to physically simulate object deformations driven by forces induced from densely reconstructed 3D hand motions, ensuring that the reconstructed object dynamics are both physically plausible and coherent with the interacting hand movements. Furthermore, we demonstrate that such simulation of object deformations can, in turn, refine and improve hand reconstruction via inverse physics. In experiments, PhysHanDI outperforms the state-of-the-art baseline across reconstruction and future prediction.

Jihyun Lee, Changmin Lee, Donghwan Kim, Tae-Kyun Kim• 2026

Related benchmarks

TaskDatasetResultRank
Future PredictionPhysTwin full
CDdyn13.63
4
Future PredictionPhysTwin dense (unseen frames)
CDdyn14.35
4
Reconstruction & ResimulationPhysTwin full
CD (Dynamic)7.3
4
Reconstruction & ResimulationPhysTwin dense (seen frames)
CDdyn8.32
4
Future PredictionDENSEHDI
CD7.54
2
Hand-Deformable Object Interaction ReconstructionPhysTwin full (unseen interactions)
Chamfer Distance (CD)8.38
2
Reconstruction & ResimulationDENSEHDI
CD5.06
2
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