vMFNet: Compositionality Meets Domain-generalised Segmentation

06/29/2022
by   Xiao Liu, et al.
4

Training medical image segmentation models usually requires a large amount of labeled data. By contrast, humans can quickly learn to accurately recognise anatomy of interest from medical (e.g. MRI and CT) images with some limited guidance. Such recognition ability can easily generalise to new images from different clinical centres. This rapid and generalisable learning ability is mostly due to the compositional structure of image patterns in the human brain, which is less incorporated in medical image segmentation. In this paper, we model the compositional components (i.e. patterns) of human anatomy as learnable von-Mises-Fisher (vMF) kernels, which are robust to images collected from different domains (e.g. clinical centres). The image features can be decomposed to (or composed by) the components with the composing operations, i.e. the vMF likelihoods. The vMF likelihoods tell how likely each anatomical part is at each position of the image. Hence, the segmentation mask can be predicted based on the vMF likelihoods. Moreover, with a reconstruction module, unlabeled data can also be used to learn the vMF kernels and likelihoods by recombining them to reconstruct the input image. Extensive experiments show that the proposed vMFNet achieves improved generalisation performance on two benchmarks, especially when annotations are limited. Code is publicly available at: https://github.com/vios-s/vMFNet.

READ FULL TEXT
research
06/13/2023

Compositionally Equivariant Representation Learning

Deep learning models often need sufficient supervision (i.e. labelled da...
research
02/03/2021

Modeling the Probabilistic Distribution of Unlabeled Data forOne-shot Medical Image Segmentation

Existing image segmentation networks mainly leverage large-scale labeled...
research
10/24/2022

MISm: A Medical Image Segmentation Metric for Evaluation of weak labeled Data

Performance measures are an important tool for assessing and comparing d...
research
12/19/2022

Segmentation Ability Map: Interpret deep features for medical image segmentation

Deep convolutional neural networks (CNNs) have been widely used for medi...
research
09/20/2019

Neural Style Transfer Improves 3D Cardiovascular MR Image Segmentation on Inconsistent Data

Three-dimensional medical image segmentation is one of the most importan...
research
12/04/2019

Knee Cartilage Segmentation Using Diffusion-Weighted MRI

The integrity of articular cartilage is a crucial aspect in the early di...
research
08/16/2020

Training CNN Classifiers for Semantic Segmentation using Partially Annotated Images: with Application on Human Thigh and Calf MRI

Objective: Medical image datasets with pixel-level labels tend to have a...

Please sign up or login with your details

Forgot password? Click here to reset