Exemplar Learning for Medical Image Segmentation

04/03/2022
by   Qing En, et al.
0

Medical image annotation typically requires expert knowledge and hence incurs time-consuming and expensive data annotation costs. To reduce this burden, we propose a novel learning scenario, Exemplar Learning (EL), to explore automated learning processes for medical image segmentation from a single annotated image example. This innovative learning task is particularly suitable for medical image segmentation, where all categories of organs can be presented in one single image for annotation all at once. To address this challenging EL task, we propose an Exemplar Learning-based Synthesis Net (ELSNet) framework for medical image segmentation that enables innovative exemplar-based data synthesis, pixel-prototype based contrastive embedding learning, and pseudo-label based exploitation of the unlabeled data. Specifically, ELSNet introduces two new modules for image segmentation: an exemplar-guided synthesis module, which enriches and diversifies the training set by synthesizing annotated samples from the given exemplar, and a pixel-prototype based contrastive embedding module, which enhances the discriminative capacity of the base segmentation model via contrastive self-supervised learning. Moreover, we deploy a two-stage process for segmentation model training, which exploits the unlabeled data with predicted pseudo segmentation labels. To evaluate this new learning framework, we conduct extensive experiments on several organ segmentation datasets and present an in-depth analysis. The empirical results show that the proposed exemplar learning framework produces effective segmentation results.

READ FULL TEXT

page 2

page 4

page 5

page 11

research
08/26/2021

PoissonSeg: Semi-Supervised Few-Shot Medical Image Segmentation via Poisson Learning

The application of deep learning to medical image segmentation has been ...
research
12/17/2022

Annotation by Clicks: A Point-Supervised Contrastive Variance Method for Medical Semantic Segmentation

Medical image segmentation methods typically rely on numerous dense anno...
research
01/21/2022

Contrastive and Selective Hidden Embeddings for Medical Image Segmentation

Medical image segmentation has been widely recognized as a pivot procedu...
research
06/25/2023

Scribble-supervised Cell Segmentation Using Multiscale Contrastive Regularization

Current state-of-the-art supervised deep learning-based segmentation app...
research
07/24/2019

Mixed-Supervised Dual-Network for Medical Image Segmentation

Deep learning-based medical image segmentation models usually require la...
research
04/05/2021

Cascaded Robust Learning at Imperfect Labels for Chest X-ray Segmentation

The superior performance of CNN on medical image analysis heavily depend...
research
04/02/2023

Learning Agreement from Multi-source Annotations for Medical Image Segmentation

In medical image analysis, it is typical to merge multiple independent a...

Please sign up or login with your details

Forgot password? Click here to reset