--- license: mit task_categories: - robotics language: - en tags: - robotics - robotic-manipulation - bimanual-manipulation - vision-language-model - conference-on-robot-learning - corl2024 pretty_name: 'VoxAct-B: Voxel-Based Acting and Stabilizing Policy for Bimanual Manipulation' --- # VoxAct-B: Voxel-Based Acting and Stabilizing Policy for Bimanual Manipulation (CoRL 2024) Datasets for [VoxAct-B](https://github.com/VoxAct-B/voxactb). [[Project website](https://voxact-b.github.io/)] [[Paper](https://arxiv.org/abs/2407.04152)] **Authors**: [I-Chun Arthur Liu](https://arthurliu.com/), [Sicheng He](https://hesicheng.net/), [Daniel Seita](https://danielseita.github.io/)\*, [Gaurav S. Sukhatme](https://uscresl.org/principal-investigator/)\* (\* equal advising). Bimanual manipulation is critical to many robotics applications. In contrast to single-arm manipulation, bimanual manipulation tasks are challenging due to higher-dimensional action spaces. Prior works leverage large amounts of data and primitive actions to address this problem, but may suffer from sample inefficiency and limited generalization across various tasks. To this end, we propose VoxAct-B, a language-conditioned, voxel-based method that leverages Vision Language Models (VLMs) to prioritize key regions within the scene and reconstruct a voxel grid. We provide this voxel grid to our bimanual manipulation policy to learn acting and stabilizing actions. This approach enables more efficient policy learning from voxels and is generalizable to different tasks. In simulation, we show that VoxAct-B outperforms strong baselines on fine-grained bimanual manipulation tasks. Furthermore, we demonstrate VoxAct-B on real-world π™Ύπš™πšŽπš— π™³πš›πšŠπš πšŽπš› and π™Ύπš™πšŽπš— π™ΉπšŠπš› tasks using two UR5s.