Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Disentangled Robot Learning via Separate Forward and Inverse Dynamics Pretraining

About

Vision-language-action (VLA) models have shown great potential in building generalist robots, but still face a dilemma-misalignment of 2D image forecasting and 3D action prediction. Besides, such a vision-action entangled training manner limits model learning from large-scale, action-free web video data. To address these issues, we propose DeFI, a novel framework that Decouples visual Forward and Inverse dynamics pretraining to exploit respective data sources, wherein video generation and action prediction are disentangled. We introduce the General Forward Dynamics Model (GFDM), pretrained on diverse human and robot videos for future prediction, and the General Inverse Dynamics Model (GIDM), trained via self-supervised learning to infer latent actions from unlabeled video transitions. These models are then integrated into a unified architecture for end-to-end finetuning on downstream tasks. In this manner, GFDM and GIDM first shine separately and then cooperate for mutual benefit. Extensive experiments on CALVIN ABC-D and SimplerEnv demonstrate state-of-the-art performance, with DeFI achieving an average task length of 4.51 for CALVIN, 51.2% success rate on SimplerEnv-Fractal benchmark and 81.3% success rate in real-world deployment, significantly outperforming prior methods.

Wenyao Zhang, Bozhou Zhang, Zekun Qi, Wenjun Zeng, Xin Jin, Li Zhang• 2026

Related benchmarks

TaskDatasetResultRank
Robot ManipulationSimplerEnv Google Robot tasks Variant Aggregation
Average Success Rate45.4
88
Robot ManipulationSimplerEnv Google Robot Visual Matching
Pick Coke Can54.2
65
Robot ManipulationCalvin ABC->D
Average Successful Length4.51
62
Robot ManipulationFranka Robot Real-world
Average Success Rate81.3
13
Showing 4 of 4 rows

Other info

GitHub

Follow for update