Прати
Sayantan Bhadra
Sayantan Bhadra
Верификована је имејл адреса на nih.gov - Почетна страница
Наслов
Навело
Навело
Година
On hallucinations in tomographic image reconstruction
S Bhadra, VA Kelkar, FJ Brooks, MA Anastasio
IEEE transactions on medical imaging 40 (11), 3249-3260, 2021
1242021
Full-view 3D imaging system for functional and anatomical screening of the breast
A Oraevsky, R Su, H Nguyen, J Moore, Y Lou, S Bhadra, L Forte, ...
Photons Plus Ultrasound: Imaging and Sensing 2018 10494, 217-226, 2018
452018
Compressible latent-space invertible networks for generative model-constrained image reconstruction
VA Kelkar, S Bhadra, MA Anastasio
IEEE transactions on computational imaging 7, 209-223, 2021
392021
Medical image reconstruction with image-adaptive priors learned by use of generative adversarial networks
S Bhadra, W Zhou, MA Anastasio
Medical imaging 2020: physics of medical imaging 11312, 206-213, 2020
382020
Learning stochastic object models from medical imaging measurements by use of advanced ambient generative adversarial networks
W Zhou, S Bhadra, FJ Brooks, H Li, MA Anastasio
Journal of Medical Imaging 9 (1), 015503-015503, 2022
182022
Medical Imaging 2019: Image Perception, Observer Performance, and Technology Assessment
W Zhou, S Bhadra, F Brooks, MA Anastasio
Volume 10577, 287-292, 2019
152019
Learning stochastic object model from noisy imaging measurements using AmbientGANs
W Zhou, S Bhadra, F Brooks, MA Anastasio
Medical Imaging 2019: Image Perception, Observer Performance, and Technology …, 2019
102019
Mining the manifolds of deep generative models for multiple data-consistent solutions of ill-posed tomographic imaging problems
S Bhadra, U Villa, MA Anastasio
arXiv preprint arXiv:2202.05311, 2022
72022
Progressively-growing ambientgans for learning stochastic object models from imaging measurements
W Zhou, S Bhadra, FJ Brooks, H Li, MA Anastasio
Medical Imaging 2020: Image Perception, Observer Performance, and Technology …, 2020
72020
Learning stochastic object models from medical imaging measurements using Progressively-Growing AmbientGANs
W Zhou, S Bhadra, FJ Brooks, H Li, MA Anastasio
arXiv preprint arXiv:2006.00033, 2020
62020
Advancing the AmbientGAN for learning stochastic object models
W Zhou, S Bhadra, FJ Brooks, JL Granstedt, H Li, MA Anastasio
Medical Imaging 2021: Image Perception, Observer Performance, and Technology …, 2021
52021
Learning stochastic object models from medical imaging measurements by use of advanced ambientgans
W Zhou, S Bhadra, FJ Brooks, H Li, MA Anastasio
arXiv preprint arXiv:2106.14324, 2021
42021
Improved subcutaneous edema segmentation on abdominal CT using a generated adipose tissue density prior
J Liu, O Shafaat, S Bhadra, C Parnell, A Harris, RM Summers
International journal of computer assisted radiology and surgery 19 (3), 443-448, 2024
22024
Assessing regularization in tomographic imaging via hallucinations in the null space
S Bhadra, VA Kelkar, FJ Brooks, MA Anastasio
Medical Imaging 2021: Image Perception, Observer Performance, and Technology …, 2021
12021
Medical image reconstruction using compressible latent space invertible networks
VA Kelkar, S Bhadra, MA Anastasio
Medical Imaging 2021: Physics of Medical Imaging 11595, 465-473, 2021
12021
Subcutaneous edema segmentation on abdominal CT using multi-class labels and iterative annotation
S Bhadra, J Liu, RM Summers
International Journal of Computer Assisted Radiology and Surgery, 1-7, 2024
2024
Weakly supervised learning for subcutaneous edema segmentation of abdominal CT using pseudo-labels and multi-stage nnU-Nets
S Bhadra, J Liu, RM Summers
Medical Imaging 2024: Computer-Aided Diagnosis 12927, 782-786, 2024
2024
Deep Learning for Tomographic Image Reconstruction Guided by Generative Models and Image Science
S Bhadra
Washington University in St. Louis, 2023
2023
Recitation Session
S Bhadra
1918
2021 Index IEEE Transactions on Computational Imaging Vol. 7
A Al-Saffar, MB Alver, MG Amin, MA Anastasio, GR Arce, H Arguello, ...
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