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Giovanni De Magistris

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Controllable Image Synthesis of Industrial Data Using Stable Diffusion

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Jan 06, 2024
Gabriele Valvano, Antonino Agostino, Giovanni De Magistris, Antonino Graziano, Giacomo Veneri

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Combining Thermodynamics-based Model of the Centrifugal Compressors and Active Machine Learning for Enhanced Industrial Design Optimization

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Sep 06, 2023
Shadi Ghiasi, Guido Pazzi, Concettina Del Grosso, Giovanni De Magistris, Giacomo Veneri

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Deep Surrogate of Modular Multi Pump using Active Learning

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Aug 04, 2022
Malathi Murugesan, Kanika Goyal, Laure Barriere, Maura Pasquotti, Giacomo Veneri, Giovanni De Magistris

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Constrained Exploration and Recovery from Experience Shaping

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Sep 21, 2018
Tu-Hoa Pham, Giovanni De Magistris, Don Joven Agravante, Subhajit Chaudhury, Asim Munawar, Ryuki Tachibana

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Deep Learning with Predictive Control for Human Motion Tracking

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Aug 07, 2018
Don Joven Agravante, Giovanni De Magistris, Asim Munawar, Phongtharin Vinayavekhin, Ryuki Tachibana

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Experimental Force-Torque Dataset for Robot Learning of Multi-Shape Insertion

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Jul 25, 2018
Giovanni De Magistris, Asim Munawar, Tu-Hoa Pham, Tadanobu Inoue, Phongtharin Vinayavekhin, Ryuki Tachibana

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Transfer Learning From Synthetic To Real Images Using Variational Autoencoders For Precise Position Detection

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Jul 04, 2018
Tadanobu Inoue, Subhajit Chaudhury, Giovanni De Magistris, Sakyasingha Dasgupta

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Focusing on What is Relevant: Time-Series Learning and Understanding using Attention

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Jun 22, 2018
Phongtharin Vinayavekhin, Subhajit Chaudhury, Asim Munawar, Don Joven Agravante, Giovanni De Magistris, Daiki Kimura, Ryuki Tachibana

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MaestROB: A Robotics Framework for Integrated Orchestration of Low-Level Control and High-Level Reasoning

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Jun 03, 2018
Asim Munawar, Giovanni De Magistris, Tu-Hoa Pham, Daiki Kimura, Michiaki Tatsubori, Takao Moriyama, Ryuki Tachibana, Grady Booch

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OptLayer - Practical Constrained Optimization for Deep Reinforcement Learning in the Real World

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Feb 23, 2018
Tu-Hoa Pham, Giovanni De Magistris, Ryuki Tachibana

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