Redirecting to original paper in 30 seconds...
Click below to go immediately or wait for automatic redirect
📄 Abstract
Abstract: Bimanual robotic manipulation is an emerging and critical topic in the
robotics community. Previous works primarily rely on integrated control models
that take the perceptions and states of both arms as inputs to directly predict
their actions. However, we think bimanual manipulation involves not only
coordinated tasks but also various uncoordinated tasks that do not require
explicit cooperation during execution, such as grasping objects with the
closest hand, which integrated control frameworks ignore to consider due to
their enforced cooperation in the early inputs. In this paper, we propose a
novel decoupled interaction framework that considers the characteristics of
different tasks in bimanual manipulation. The key insight of our framework is
to assign an independent model to each arm to enhance the learning of
uncoordinated tasks, while introducing a selective interaction module that
adaptively learns weights from its own arm to improve the learning of
coordinated tasks. Extensive experiments on seven tasks in the RoboTwin dataset
demonstrate that: (1) Our framework achieves outstanding performance, with a
23.5% boost over the SOTA method. (2) Our framework is flexible and can be
seamlessly integrated into existing methods. (3) Our framework can be
effectively extended to multi-agent manipulation tasks, achieving a 28% boost
over the integrated control SOTA. (4) The performance boost stems from the
decoupled design itself, surpassing the SOTA by 16.5% in success rate with only
1/6 of the model size.
Key Contributions
This paper proposes a novel decoupled interaction framework for bimanual robotic manipulation that addresses the limitations of integrated control models. By assigning independent models to each arm for uncoordinated tasks and using a selective interaction module for coordinated tasks, the framework enhances learning efficiency and adaptability for diverse bimanual operations.
Business Value
Enables more versatile and efficient robotic automation in manufacturing, logistics, and other fields requiring complex manipulation, leading to increased productivity and reduced operational costs.