'Squeeze & Excite' Guided Few-Shot Segmentation of Volumetric Images

02/04/2019
by   Abhijit Guha Roy, et al.
10

Deep neural networks enable highly accurate image segmentation, but require large amounts of manually annotated data for supervised training. Few-shot learning aims to address this shortcoming by learning a new class from a few annotated support examples. We introduce, for the first time, a novel few-shot framework, for the segmentation of volumetric medical images with only a few annotated slices. Compared to other related works in computer vision, the major challenges are the absence of pre-trained networks and the volumetric nature of medical scans. We address these challenges by proposing a new architecture for few-shot segmentation that incorporates 'squeeze & excite' blocks. Our two-armed architecture consists of a conditioner arm, which processes the annotated support input and generates a task representation which is used the relevant information for segmenting a new class. This representation is passed on to the segmenter arm that uses this information to segment the new query image. To facilitate efficient interaction between the conditioner and the segmenter arm, we propose to use 'channel squeeze & spatial excitation' blocks: a light-weight computational module, that enables heavy interaction between the both arms with negligible increase in model complexity. This contribution allows us to perform image segmentation without relying on a pre-trained model, which generally is unavailable for medical scans. Furthermore, we propose an efficient strategy for volumetric segmentation by optimally pairing a few slices of the support volume to all the slices of query volume. We perform the experiments for organ segmentation on whole-body contrast-enhanced CT scans from Visceral Dataset. Our proposed model outperforms multiple baselines and existing approaches with respect to the segmentation accuracy by a significant margin.

READ FULL TEXT

page 2

page 5

page 9

page 13

research
09/07/2023

SAM3D: Segment Anything Model in Volumetric Medical Images

Image segmentation is a critical task in medical image analysis, providi...
research
12/03/2018

Elastic Boundary Projection for 3D Medical Imaging Segmentation

We focus on an important yet challenging problem: using a 2D deep networ...
research
01/17/2022

Few-shot image segmentation for cross-institution male pelvic organs using registration-assisted prototypical learning

The ability to adapt medical image segmentation networks for a novel cla...
research
09/18/2021

MetaMedSeg: Volumetric Meta-learning for Few-Shot Organ Segmentation

The lack of sufficient annotated image data is a common issue in medical...
research
07/06/2018

Deep Sequential Segmentation of Organs in Volumetric Medical Scans

Segmentation in 3D scans is playing an increasingly important role in cu...
research
11/26/2020

IFSS-Net: Interactive Few-Shot Siamese Network for Faster Muscles Segmentation and Propagation in 3-D Freehand Ultrasound

We present an accurate, fast and efficient method for segmentation and m...
research
06/21/2016

3D U-Net: Learning Dense Volumetric Segmentation from Sparse Annotation

This paper introduces a network for volumetric segmentation that learns ...

Please sign up or login with your details

Forgot password? Click here to reset