RoboPapers
Humans use tools to perform almost all of the physical work that we do from day to day. However, tools come in many different sizes and shapes, and it’s very difficult to collect human data for them in general. What about training in simulation? SimTooReal aims to address this through, unsurprisingly, sim-to-real learning. Kushal Kedia [https://x.com/kushalk_] and Tyler Lum [https://x.com/tylerlum23] talk about how it works: they procedurally generate tool-like objects, and then train with the universal objective of moving objects around to different locations. This creates a general-purpose model which can manipulate various tools to perform a variety of tasks in the real world. Watch episode #82 of RoboPapers, hosted by Michael Cho and Jiafei Duan, now to learn more! Abstract The ability to manipulate tools significantly expands the set of tasks a robot can perform. Yet, tool manipulation represents a challenging class of dexterity, requiring grasping thin objects, in-hand object rotations, and forceful interactions. Since collecting teleoperation data for these behaviors is challenging, sim-to-real reinforcement learning (RL) is a promising alternative. However, prior approaches typically require substantial engineering effort to model objects and tune reward functions for each task. In this work, we propose SimToolReal, taking a step towards generalizing sim-to-real RL policies for tool manipulation. Instead of focusing on a single object and task, we procedurally generate a large variety of tool-like object primitives in simulation and train a single RL policy with the universal goal of manipulating each object to random goal poses. This approach enables SimToolReal to perform general dexterous tool manipulation at test-time without any object or task-specific training. We demonstrate that SimToolReal outperforms prior retargeting and fixed-grasp methods by 37% while matching the performance of specialist RL policies trained on specific target objects and tasks. Finally, we show that SimToolReal generalizes across a diverse set of everyday tools, achieving strong zero-shot performance over 120 real-world rollouts spanning 24 tasks, 12 object instances, and 6 tool categories. Learn More Project page: https://simtoolreal.github.io/ [https://simtoolreal.github.io/] ArXiV: https://arxiv.org/abs/2602.16863 [https://arxiv.org/abs/2602.16863] This is a public episode. If you would like to discuss this with other subscribers or get access to bonus episodes, visit robopapers.substack.com [https://robopapers.substack.com?utm_medium=podcast&utm_campaign=CTA_1]
85 episodios
Comentarios
0Sé la primera persona en comentar
¡Regístrate ahora y únete a la comunidad de RoboPapers!