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Robot Learning of Human Trust

A codebase of the paper "Improving Trust Estimation in Human-Robot Collaboration Using Beta Reputation at Fine-grained Timescales".



Authors

Resul Dagdanov, Milan Andrejevic, Dikai Liu, Chin-Teng Lin

Watch YouTube Video

Watch Video

Video 1: Detailed Explanation of the Proposed Framework [YouTube Link]

Follow ReadMe File for Experiments and Source Code


Citation

@misc{dagdanov2024trust,
      title={Improving Trust Estimation in Human-Robot Collaboration Using Beta Reputation at Fine-grained Timescales}, 
      author={Resul Dagdanov and Milan Andrejevic and Dikai Liu and Chin-Teng Lin},
      year={2024},
      eprint={2411.01866},
      archivePrefix={arXiv},
      primaryClass={cs.RO},
      url={https://arxiv.org/abs/2411.01866}, 
}

Teaser

Teaser

Figure 1: Teaser of the Proposed Framework

General Framework

Framework

Figure 2: General Framework

Autonomous Tiling with Collaborative Robot

Tiling Operation

Video 2: Robot Executing Tiling Operation Autonomously after Learning from Demonstrations

Human Trust Measurement

Measurement

Figure 3: Measurement of Human Trust Toward a Robot (7-point Likert Scale)

Methodology

Methodology

Figure 4: Illustration of an Iterative Human Trust Modeling Process (Proposed Framework)

Data Collection Process

Human Interaction

Figure 5: Data Collection by Human Demonstrator in UTS Robotics Institute Lab Environment

Reward Function with Maximum-Entropy Optimization

Simulation Video

Video 3: Visualization of Robot Decision-Making Policy in ROS Simulation Environment during IRL Optimization