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Bi-directional Momentum-based Haptic Feedback and Control System for In-Hand Dexterous Telemanipulation

30 September 2024
Haoyang Wang
Haoran Guo
He Ba
Zhengxiong Li
Lingfeng Tao
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Abstract

In-hand dexterous telemanipulation requires not only precise remote motion control of the robot but also effective haptic feedback to the human operator to ensure stable and intuitive interactions between them. Most existing haptic devices for dexterous telemanipulation focus on force feedback and lack effective torque rendering, which is essential for tasks involving object rotation. While some torque feedback solutions in virtual reality applications-such as those based on geared motors or mechanically coupled actuators-have been explored, they often rely on bulky mechanical designs, limiting their use in portable or in-hand applications. In this paper, we propose a Bi-directional Momentum-based Haptic Feedback and Control (Bi-Hap) system that utilizes a palm-sized momentum-actuated mechanism to enable real-time haptic and torque feedback. The Bi-Hap system also integrates an Inertial Measurement Unit (IMU) to extract the human's manipulation command to establish a closed-loop learning-based telemanipulation framework. Furthermore, an error-adaptive feedback strategy is introduced to enhance operator perception and task performance in different error categories. Experimental evaluations demonstrate that Bi-Hap achieved feedback capability with low command following latency (Delay < 0.025 s) and highly accurate torque feedback (RMSE < 0.010 Nm).

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@article{wang2025_2409.20527,
  title={ Bi-directional Momentum-based Haptic Feedback and Control System for In-Hand Dexterous Telemanipulation },
  author={ Haoyang Wang and Haoran Guo and He Ba and Zhengxiong Li and Lingfeng Tao },
  journal={arXiv preprint arXiv:2409.20527},
  year={ 2025 }
}
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