Today robots must be safe, versatile, and user-friendly to operate in unstructured and human-populated environments. Dynamical system-based imitation learning enables robots to perform complex tasks stably and without explicit programming, greatly simplifying their real-world deployment. To exploit the full potential of these systems it is crucial to implement closed loops that use visual feedback. Vision permits to cope with environmental changes, but is complex to handle due to the high dimension of the image space. This study introduces a dynamical system-based imitation learning for direct visual servoing. It leverages off-the-shelf deep learning-based perception modules to extract robust features from the raw input image, and an imitation learning strategy to execute sophisticated robot motions. The learning blocks are integrated using the large projection task priority formulation. As demonstrated through extensive experimental analysis, the proposed method realizes complex tasks with a robotic manipulator.

Imitation Learning-Based Direct Visual Servoing Using the Large Projection Formulation / Auddy, S.; Paolillo, A.; Piater, J.; Saveriano, M.. - In: ROBOTICS AND AUTONOMOUS SYSTEMS. - ISSN 0921-8890. - 2025, 190:(2025), pp. 1-10. [10.1016/j.robot.2025.104971]

Imitation Learning-Based Direct Visual Servoing Using the Large Projection Formulation

Saveriano M.
2025-01-01

Abstract

Today robots must be safe, versatile, and user-friendly to operate in unstructured and human-populated environments. Dynamical system-based imitation learning enables robots to perform complex tasks stably and without explicit programming, greatly simplifying their real-world deployment. To exploit the full potential of these systems it is crucial to implement closed loops that use visual feedback. Vision permits to cope with environmental changes, but is complex to handle due to the high dimension of the image space. This study introduces a dynamical system-based imitation learning for direct visual servoing. It leverages off-the-shelf deep learning-based perception modules to extract robust features from the raw input image, and an imitation learning strategy to execute sophisticated robot motions. The learning blocks are integrated using the large projection task priority formulation. As demonstrated through extensive experimental analysis, the proposed method realizes complex tasks with a robotic manipulator.
2025
Auddy, S.; Paolillo, A.; Piater, J.; Saveriano, M.
Imitation Learning-Based Direct Visual Servoing Using the Large Projection Formulation / Auddy, S.; Paolillo, A.; Piater, J.; Saveriano, M.. - In: ROBOTICS AND AUTONOMOUS SYSTEMS. - ISSN 0921-8890. - 2025, 190:(2025), pp. 1-10. [10.1016/j.robot.2025.104971]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11572/457230
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