Search Results for author: Giacomo Veneri

Found 5 papers, 0 papers with code

Controllable Image Synthesis of Industrial Data Using Stable Diffusion

no code implementations6 Jan 2024 Gabriele Valvano, Antonino Agostino, Giovanni De Magistris, Antonino Graziano, Giacomo Veneri

Training supervised deep neural networks that perform defect detection and segmentation requires large-scale fully-annotated datasets, which can be hard or even impossible to obtain in industrial environments.

Defect Detection Image Generation

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

no code implementations6 Sep 2023 Shadi Ghiasi, Guido Pazzi, Concettina Del Grosso, Giovanni De Magistris, Giacomo Veneri

The design process of centrifugal compressors requires applying an optimization process which is computationally expensive due to complex analytical equations underlying the compressor's dynamical equations.

Active Learning

Learning to Identify Drilling Defects in Turbine Blades with Single Stage Detectors

no code implementations8 Aug 2022 Andrea Panizza, Szymon Tomasz Stefanek, Stefano Melacci, Giacomo Veneri, Marco Gori

The application is challenging due to the large image resolutions in which defects are very small and hardly captured by the commonly used anchor sizes, and also due to the small size of the available dataset.

Data Augmentation object-detection +1

Deep Surrogate of Modular Multi Pump using Active Learning

no code implementations4 Aug 2022 Malathi Murugesan, Kanika Goyal, Laure Barriere, Maura Pasquotti, Giacomo Veneri, Giovanni De Magistris

Based on these considerations, we develop an active learning framework for estimating the operating point of a Modular Multi Pump used in energy field.

Active Learning

DANNTe: a case study of a turbo-machinery sensor virtualization under domain shift

no code implementations11 Jan 2022 Luca Strazzera, Valentina Gori, Giacomo Veneri

We propose an adversarial learning method to tackle a Domain Adaptation (DA) time series regression task (DANNTe).

Domain Adaptation regression +2

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