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Tristan Payer

Showing results (1-10 of 5) with videos related to

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Journal of Medical Imaging (Bellingham, Wash.)|August 21, 2023
Medical volume segmentation by overfitting sparsely annotated dataTristan Payer, Faraz Nizamani, Meinrad Beer, et al.
Journal of Microscopy|June 28, 2025
DeepEM Playground: Bringing deep learning to electron microscopy labsHannah Kniesel, Poonam Poonam, Tristan Payer, et al.
Computers in Biology and Medicine|October 10, 2024
Less is More: Selective reduction of CT data for self-supervised pre-training of deep learning models with contrastive learning improves downstream classification performanceDaniel Wolf, Tristan Payer, Catharina Silvia Lisson, et al.
Scientific Reports|November 21, 2023
Self-supervised pre-training with contrastive and masked autoencoder methods for dealing with small datasets in deep learning for medical imagingDaniel Wolf, Tristan Payer, Catharina Silvia Lisson, et al.
IEEE Transactions on Visualization and Computer Graphics|July 1, 2025
A Survey on Quality Metrics for Text-to-Image GenerationSebastian Hartwig, Dominik Engel, Leon Sick, et al.
Pageof 1

Showing results (1-10 of 5) with videos related to

Sort By:
Pageof 1
Journal of Medical Imaging (Bellingham, Wash.)|August 21, 2023
Medical volume segmentation by overfitting sparsely annotated dataTristan Payer, Faraz Nizamani, Meinrad Beer, et al.
Journal of Microscopy|June 28, 2025
DeepEM Playground: Bringing deep learning to electron microscopy labsHannah Kniesel, Poonam Poonam, Tristan Payer, et al.
Computers in Biology and Medicine|October 10, 2024
Less is More: Selective reduction of CT data for self-supervised pre-training of deep learning models with contrastive learning improves downstream classification performanceDaniel Wolf, Tristan Payer, Catharina Silvia Lisson, et al.
Scientific Reports|November 21, 2023
Self-supervised pre-training with contrastive and masked autoencoder methods for dealing with small datasets in deep learning for medical imagingDaniel Wolf, Tristan Payer, Catharina Silvia Lisson, et al.
IEEE Transactions on Visualization and Computer Graphics|July 1, 2025
A Survey on Quality Metrics for Text-to-Image GenerationSebastian Hartwig, Dominik Engel, Leon Sick, et al.
Pageof 1