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Valvano Gabriele
Valvano Gabriele
Baker Hughes, IMT School for Advanced Studies Lucca
Dirección de correo verificada de bakerhughes.com
Título
Citado por
Citado por
Año
Learning to Segment from Scribbles using Multi-scale Adversarial Attention Gates
G Valvano, A Leo, SA Tsaftaris
IEEE Transactions on Medical Imaging, 2020
752020
Convolutional Neural Networks for the segmentation of microcalcification in Mammography Imaging
G Valvano, G Santini, N Martini, A Ripoli, C Iacconi, D Chiappino, ...
Journal of Healthcare Engineering 2019, 2019
712019
An automatic deep learning approach for coronary artery calcium segmentation
G Santini, DD Latta, N Martini, G Valvano, A Gori, A Ripoli, CL Susini, ...
European Medical and Biological Engineering Confernce, 374-377, 2017
392017
Measuring the Biases and Effectiveness of Content-Style Disentanglement
X Liu, S Thermos, G Valvano, A Chartsias, A O’Neil, SA Tsaftaris
British Machine Vision Conference (BMVC), 2021
21*2021
Synthetic contrast enhancement in cardiac CT with Deep Learning
G Santini, LM Zumbo, N Martini, G Valvano, A Leo, A Ripoli, F Avogliero, ...
arXiv preprint arXiv:1807.01779, 2018
192018
Evaluation of a Deep Convolutional Neural Network method for the segmentation of breast microcalcifications in Mammography Imaging
G Valvano, D Della Latta, N Martini, G Santini, A Gori, C Iacconi, A Ripoli, ...
EMBEC & NBC 2017: Joint Conference of the European Medical and Biological …, 2018
172018
Temporal Consistency Objectives Regularize the Learning of Disentangled Representations
G Valvano, A Chartsias, A Leo, SA Tsaftaris
Domain Adaptation and Representation Transfer and Medical Image Learning …, 2019
122019
Re-using Adversarial Mask Discriminators for Test-time Training under Distribution Shifts
G Valvano, A Leo, SA Tsaftaris
Journal of Machine Learning for Biomedical Imaging, 2022
82022
Stop Throwing Away Discriminators! Re-using Adversaries for Test-Time Training
G Valvano, A Leo, SA Tsaftaris
Domain Adaptation and Representation Transfer, 2021
82021
Self-supervised Multi-scale Consistency for Weakly Supervised Segmentation Learning
G Valvano, A Leo, SA Tsaftaris
Domain Adaptation and Representation Transfer, 2021
52021
Synthetic contrast enhancement in cardiac CT with deep learning,(2018) 1–8
G Santini, LM Zumbo, N Martini, G Valvano, A Leo, A Ripoli, F Avogliero, ...
52018
Regularizing disentangled representations with anatomical temporal consistency
G Valvano, A Leo, SA Tsaftaris
Biomedical Image Synthesis and Simulation, 325-346, 2022
12022
Robust reconstruction of cardiac T1 maps using RNNs
N Martini, A Vatti, A Ripoli, S Salaris, G Santini, G Valvano, MF Santarelli, ...
Medical Imaging with Deep Learning, 2019
12019
Automatic AHA model segmentation of cardiac T1 maps with deep learning
N Martini, D Della Latta, G Santini, G Valvano, A Barison, F Avogliero, ...
Proc Intl Soc Mag Reson Med 26, 1047, 2018
12018
Controllable Image Synthesis of Industrial Data using Stable Diffusion
G Valvano, A Agostino, G De Magistris, A Graziano, G Veneri
Winter Conference on Applications of Computer Vision (WACV) 2024, 2023
2023
Semi-supervised and weakly-supervised learning with spatio-temporal priors in medical image segmentation
G Valvano
IMT School for Advanced Studies Lucca, 2021
2021
Measuring the Biases and Effectiveness of Content-Style Disentanglement (Supplementary Material)
X Liu, S Thermos, G Valvano, A Chartsias, A O’Neil, SA Tsaftaris
2021
Sviluppo di un sistema di Deep Learning per segmentazione di immagini mammografiche
G VALVANO
University of Pisa, 2017
2017
El sistema no puede realizar la operación en estos momentos. Inténtalo de nuevo más tarde.
Artículos 1–18