Recent work has shown that label-efficient few-shot learning through self-supervision can achieve promising medical image segmentation results. However, few-shot segmentation models typically rely on prototype representations of the semantic classes, resulting in a loss of local information that can degrade performance. This is particularly problematic for the typically large and highly heterogeneous background class in medical image segmentation problems. Previous works have attempted to address this issue by learning additional prototypes for each class, but since the prototypes are based on a limited number of slices, we argue that this ad-hoc solution is insufficient to capture the background properties. Motivated by this, and the obser...
Widely used traditional supervised deep learning methods require a large number of training samples ...
Medical image annotation is a major hurdle for developing precise and robust machine-learning models...
Anomaly detection and localization can learn what data looks like and point out anomalous data sampl...
Recent work has shown that label-efficient few-shot learning through self-supervision can achieve p...
The majority of existing methods for machine learning-based medical image segmentation are supervise...
Standard strategies for fully supervised semantic segmentation of medical images require large pixel...
Fully-supervised deep learning segmentation models are inflexible when encountering new unseen seman...
Proceedings, Part VIAnomaly detection methods generally target the learning of a normal image distri...
Available online 18 August 2023Unsupervised anomaly detection (UAD) methods are trained with normal ...
International audienceIn this work, we address the task of few-shot medical image segmentation (MIS)...
The data-driven nature of deep learning (DL) models for semantic segmentation requires a large numbe...
Automated segmentation of large volumes of medical images is often plagued by the limited availabili...
While the Segment Anything Model (SAM) excels in semantic segmentation for general-purpose images, i...
The prowess that makes few-shot learning desirable in medical image analysis is the efficient use of...
The prowess that makes few-shot learning desirable in medical image analysis is the efficient use of...
Widely used traditional supervised deep learning methods require a large number of training samples ...
Medical image annotation is a major hurdle for developing precise and robust machine-learning models...
Anomaly detection and localization can learn what data looks like and point out anomalous data sampl...
Recent work has shown that label-efficient few-shot learning through self-supervision can achieve p...
The majority of existing methods for machine learning-based medical image segmentation are supervise...
Standard strategies for fully supervised semantic segmentation of medical images require large pixel...
Fully-supervised deep learning segmentation models are inflexible when encountering new unseen seman...
Proceedings, Part VIAnomaly detection methods generally target the learning of a normal image distri...
Available online 18 August 2023Unsupervised anomaly detection (UAD) methods are trained with normal ...
International audienceIn this work, we address the task of few-shot medical image segmentation (MIS)...
The data-driven nature of deep learning (DL) models for semantic segmentation requires a large numbe...
Automated segmentation of large volumes of medical images is often plagued by the limited availabili...
While the Segment Anything Model (SAM) excels in semantic segmentation for general-purpose images, i...
The prowess that makes few-shot learning desirable in medical image analysis is the efficient use of...
The prowess that makes few-shot learning desirable in medical image analysis is the efficient use of...
Widely used traditional supervised deep learning methods require a large number of training samples ...
Medical image annotation is a major hurdle for developing precise and robust machine-learning models...
Anomaly detection and localization can learn what data looks like and point out anomalous data sampl...