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3D Dynamics-Aware Manipulation: Endowing Manipulation Policies with 3D Foresight

About

The incorporation of world modeling into manipulation policy learning has pushed the boundary of manipulation performance. However, existing efforts simply model the 2D visual dynamics, which is insufficient for robust manipulation when target tasks involve prominent depth-wise movement. To address this, we present a 3D dynamics-aware manipulation framework that seamlessly integrates 3D world modeling and policy learning. Three self-supervised learning tasks (current depth estimation, future RGB-D prediction, 3D flow prediction) are introduced within our framework, which complement each other and endow the policy model with 3D foresight. Extensive experiments on simulation and the real world show that 3D foresight can greatly boost the performance of manipulation policies without sacrificing inference speed. Code is available at https://github.com/Stardust-hyx/3D-Foresight.

Yuxin He, Ruihao Zhang, Xianzu Wu, Zhiyuan Zhang, Cheng Ding, Qiang Nie• 2025

Related benchmarks

TaskDatasetResultRank
Robot ManipulationLIBERO
Goal Achievement94.8
700
Robotic ManipulationCalvin ABCD→D
Avg Length4.08
89
Robotic ManipulationCALVIN D->D
Average Length4.08
40
Get A TapeReal-world
Success Rate75
5
Stack Two CupsReal-world Horizontal
Success Rate80
5
Stack Two CupsReal-world Longitudinal
Success Rate70
5
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