ALOHA Unleashed: A Simple Recipe for Robot Dexterity
About
Recent work has shown promising results for learning end-to-end robot policies using imitation learning. In this work we address the question of how far can we push imitation learning for challenging dexterous manipulation tasks. We show that a simple recipe of large scale data collection on the ALOHA 2 platform, combined with expressive models such as Diffusion Policies, can be effective in learning challenging bimanual manipulation tasks involving deformable objects and complex contact rich dynamics. We demonstrate our recipe on 5 challenging real-world and 3 simulated tasks and demonstrate improved performance over state-of-the-art baselines. The project website and videos can be found at aloha-unleashed.github.io.
Tony Z. Zhao, Jonathan Tompson, Danny Driess, Pete Florence, Kamyar Ghasemipour, Chelsea Finn, Ayzaan Wahid• 2024
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Drawer-Open | Simulation 1.0 (test) | Success Rate88.7 | 8 | |
| Pen in Container | Simulation 1.0 (test) | Success Rate20.7 | 8 | |
| Screwdriver in Caddy | Simulation 1.0 (test) | Success Rate86.7 | 8 | |
| Can Opener in Caddy | Simulation 1.0 (test) | Success Rate70 | 8 | |
| Mug on Plate | Simulation 1.0 (test) | Success Rate62 | 8 | |
| Plate on Rack | Simulation 1.0 (test) | Success Rate76.7 | 8 |
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