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Towards Intuitive Drone Operation Using a Handheld Motion Controller

13 April 2025
Daria Trinitatova
Sofia Shevelo
Dzmitry Tsetserukou
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Abstract

We present an intuitive human-drone interaction system that utilizes a gesture-based motion controller to enhance the drone operation experience in real and simulated environments. The handheld motion controller enables natural control of the drone through the movements of the operator's hand, thumb, and index finger: the trigger press manages the throttle, the tilt of the hand adjusts pitch and roll, and the thumbstick controls yaw rotation. Communication with drones is facilitated via the ExpressLRS radio protocol, ensuring robust connectivity across various frequencies. The user evaluation of the flight experience with the designed drone controller using the UEQ-S survey showed high scores for both Pragmatic (mean=2.2, SD = 0.8) and Hedonic (mean=2.3, SD = 0.9) Qualities. This versatile control interface supports applications such as research, drone racing, and training programs in real and simulated environments, thereby contributing to advances in the field of human-drone interaction.

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@article{trinitatova2025_2504.09510,
  title={ Towards Intuitive Drone Operation Using a Handheld Motion Controller },
  author={ Daria Trinitatova and Sofia Shevelo and Dzmitry Tsetserukou },
  journal={arXiv preprint arXiv:2504.09510},
  year={ 2025 }
}
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