Alert button
Picture for Leonardo Rundo

Leonardo Rundo

Alert button

Calibrating Ensembles for Scalable Uncertainty Quantification in Deep Learning-based Medical Segmentation

Add code
Bookmark button
Alert button
Sep 20, 2022
Thomas Buddenkotte, Lorena Escudero Sanchez, Mireia Crispin-Ortuzar, Ramona Woitek, Cathal McCague, James D. Brenton, Ozan Öktem, Evis Sala, Leonardo Rundo

Figure 1 for Calibrating Ensembles for Scalable Uncertainty Quantification in Deep Learning-based Medical Segmentation
Figure 2 for Calibrating Ensembles for Scalable Uncertainty Quantification in Deep Learning-based Medical Segmentation
Figure 3 for Calibrating Ensembles for Scalable Uncertainty Quantification in Deep Learning-based Medical Segmentation
Figure 4 for Calibrating Ensembles for Scalable Uncertainty Quantification in Deep Learning-based Medical Segmentation
Viaarxiv icon

Focal Attention Networks: optimising attention for biomedical image segmentation

Add code
Bookmark button
Alert button
Oct 31, 2021
Michael Yeung, Leonardo Rundo, Evis Sala, Carola-Bibiane Schönlieb, Guang Yang

Figure 1 for Focal Attention Networks: optimising attention for biomedical image segmentation
Figure 2 for Focal Attention Networks: optimising attention for biomedical image segmentation
Figure 3 for Focal Attention Networks: optimising attention for biomedical image segmentation
Figure 4 for Focal Attention Networks: optimising attention for biomedical image segmentation
Viaarxiv icon

Incorporating Boundary Uncertainty into loss functions for biomedical image segmentation

Add code
Bookmark button
Alert button
Oct 31, 2021
Michael Yeung, Guang Yang, Evis Sala, Carola-Bibiane Schönlieb, Leonardo Rundo

Figure 1 for Incorporating Boundary Uncertainty into loss functions for biomedical image segmentation
Figure 2 for Incorporating Boundary Uncertainty into loss functions for biomedical image segmentation
Figure 3 for Incorporating Boundary Uncertainty into loss functions for biomedical image segmentation
Figure 4 for Incorporating Boundary Uncertainty into loss functions for biomedical image segmentation
Viaarxiv icon

Calibrating the Dice loss to handle neural network overconfidence for biomedical image segmentation

Add code
Bookmark button
Alert button
Oct 31, 2021
Michael Yeung, Leonardo Rundo, Yang Nan, Evis Sala, Carola-Bibiane Schönlieb, Guang Yang

Figure 1 for Calibrating the Dice loss to handle neural network overconfidence for biomedical image segmentation
Figure 2 for Calibrating the Dice loss to handle neural network overconfidence for biomedical image segmentation
Figure 3 for Calibrating the Dice loss to handle neural network overconfidence for biomedical image segmentation
Figure 4 for Calibrating the Dice loss to handle neural network overconfidence for biomedical image segmentation
Viaarxiv icon

Computer-Assisted Analysis of Biomedical Images

Add code
Bookmark button
Alert button
Jun 04, 2021
Leonardo Rundo

Viaarxiv icon

Advances in Artificial Intelligence to Reduce Polyp Miss Rates during Colonoscopy

Add code
Bookmark button
Alert button
May 16, 2021
Michael Yeung, Evis Sala, Carola-Bibiane Schönlieb, Leonardo Rundo

Figure 1 for Advances in Artificial Intelligence to Reduce Polyp Miss Rates during Colonoscopy
Figure 2 for Advances in Artificial Intelligence to Reduce Polyp Miss Rates during Colonoscopy
Figure 3 for Advances in Artificial Intelligence to Reduce Polyp Miss Rates during Colonoscopy
Figure 4 for Advances in Artificial Intelligence to Reduce Polyp Miss Rates during Colonoscopy
Viaarxiv icon

A Mixed Focal Loss Function for Handling Class Imbalanced Medical Image Segmentation

Add code
Bookmark button
Alert button
Feb 08, 2021
Michael Yeung, Evis Sala, Carola-Bibiane Schönlieb, Leonardo Rundo

Figure 1 for A Mixed Focal Loss Function for Handling Class Imbalanced Medical Image Segmentation
Figure 2 for A Mixed Focal Loss Function for Handling Class Imbalanced Medical Image Segmentation
Figure 3 for A Mixed Focal Loss Function for Handling Class Imbalanced Medical Image Segmentation
Figure 4 for A Mixed Focal Loss Function for Handling Class Imbalanced Medical Image Segmentation
Viaarxiv icon

MADGAN: unsupervised Medical Anomaly Detection GAN using multiple adjacent brain MRI slice reconstruction

Add code
Bookmark button
Alert button
Jul 24, 2020
Changhee Han, Leonardo Rundo, Kohei Murao, Tomoyuki Noguchi, Yuki Shimahara, Zoltan Adam Milacski, Saori Koshino, Evis Sala, Hideki Nakayama, Shinichi Satoh

Figure 1 for MADGAN: unsupervised Medical Anomaly Detection GAN using multiple adjacent brain MRI slice reconstruction
Figure 2 for MADGAN: unsupervised Medical Anomaly Detection GAN using multiple adjacent brain MRI slice reconstruction
Figure 3 for MADGAN: unsupervised Medical Anomaly Detection GAN using multiple adjacent brain MRI slice reconstruction
Figure 4 for MADGAN: unsupervised Medical Anomaly Detection GAN using multiple adjacent brain MRI slice reconstruction
Viaarxiv icon

3D deformable registration of longitudinal abdominopelvic CT images using unsupervised deep learning

Add code
Bookmark button
Alert button
May 15, 2020
Maureen van Eijnatten, Leonardo Rundo, K. Joost Batenburg, Felix Lucka, Emma Beddowes, Carlos Caldas, Ferdia A. Gallagher, Evis Sala, Carola-Bibiane Schönlieb, Ramona Woitek

Figure 1 for 3D deformable registration of longitudinal abdominopelvic CT images using unsupervised deep learning
Figure 2 for 3D deformable registration of longitudinal abdominopelvic CT images using unsupervised deep learning
Figure 3 for 3D deformable registration of longitudinal abdominopelvic CT images using unsupervised deep learning
Figure 4 for 3D deformable registration of longitudinal abdominopelvic CT images using unsupervised deep learning
Viaarxiv icon

Bridging the gap between AI and Healthcare sides: towards developing clinically relevant AI-powered diagnosis systems

Add code
Bookmark button
Alert button
Jan 12, 2020
Changhee Han, Leonardo Rundo, Kohei Murao, Takafumi Nemoto, Hideki Nakayama, Shin'ichi Satoh

Figure 1 for Bridging the gap between AI and Healthcare sides: towards developing clinically relevant AI-powered diagnosis systems
Figure 2 for Bridging the gap between AI and Healthcare sides: towards developing clinically relevant AI-powered diagnosis systems
Viaarxiv icon