Abstract
Human-robot collaboration (HRC) is essential for improving productivity and safety across various industries. While reactive motion re-planning strategies are useful, there is a growing demand for proactive methods that predict human intentions to enable more efficient collaboration. This study addresses this need by introducing a framework that combines deep learning-based human hand trajectory forecasting with heuristic optimization for robotic task sequencing. The deep learning model advances real-time hand position forecasting using a multi-task learning loss to account for both hand positions and contact delay regression, achieving stateof-the-art performance on the Ego4D Future Hand Prediction benchmark. By integrating hand trajectory predictions into task planning, the framework offers a cohesive solution for HRC. To optimize task sequencing, the framework incorporates a Dynamic Variable Neighborhood Search (DynamicVNS) heuristic algorithm, which allows robots to pre-plan task sequences and avoid potential collisions with human hand positions. DynamicVNS provides significant computational advantages over the generalized VNS method. The framework was validated on a UR10e robot performing a visual inspection task in a HRC scenario, where the robot effectively anticipated and responded to human hand movements in a shared workspace. Experimental results highlight the system's effectiveness and potential to enhance HRC in industrial settings by combining predictive accuracy and task planning efficiency.
Original language | English |
---|---|
Article number | 105443 |
Number of pages | 11 |
Journal | Image and Vision Computing |
Volume | 155 |
DOIs | |
Publication status | Published - 1 Mar 2025 |
Keywords
- Egocentric vision
- Human-robot collaboration
- TARGET
- ARM