FAM-HRI: Foundation-Model Assisted Multi-Modal Human-Robot Interaction Combining Gaze and Speech
About
ffective Human-Robot Interaction (HRI) is crucial for enhancing accessibility and usability in real-world robotics applications. However, existing solutions often rely on gesture- only or language-only commands, making interaction inefficient and ambiguous, particularly for users with physical impairments. In this paper, we introduce FAM-HRI, an efficient multimodal framework for HRI that integrates language and gaze inputs via foundation models. By leveraging lightweight Meta ARIA glasses, our system captures real-time multimodal signals and utilizes large language models (LLMs) to fuse user intention with scene context, enabling intuitive and precise robot manipulation. Our method accurately determines the gaze fixation time interval, reducing noise caused by the gaze dynamic nature. Experimental evaluations demonstrate that FAM-HRI achieves a high success rate in task execution while maintaining a low interaction time, providing a practical solution for individuals with limited physical mobility or motor impairments. To support the community, we have released our system design, algorithms, and solutions at https://github.com/laiyuzhi/FAM-HRI.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Multi-perspective Alignment | Multi-Perspective Alignment Environment (test) | Tracking Rate100 | 45 | |
| Robot Task Execution | Robot Task Scenarios Scenario S3 | Success Rate94 | 13 | |
| Causal Action Execution | Scenario S4 | Success Rate92 | 9 | |
| Object Selection Among Similar Items | Scenario S1 | Success Rate96 | 9 | |
| Single-Step Action Execution | Scenario S2 | Success Rate100 | 9 | |
| Robot Task Execution | Robot Task Scenarios Scenario S4 | Command Duration (s)1.7 | 5 | |
| User Study | User Study | NASA-TLX Score35.36 | 5 |