Test-time augmentation-based active learning and self-training for label-efficient segmentation

08/21/2023
by   Bella Specktor Fadida, et al.
0

Deep learning techniques depend on large datasets whose annotation is time-consuming. To reduce annotation burden, the self-training (ST) and active-learning (AL) methods have been developed as well as methods that combine them in an iterative fashion. However, it remains unclear when each method is the most useful, and when it is advantageous to combine them. In this paper, we propose a new method that combines ST with AL using Test-Time Augmentations (TTA). First, TTA is performed on an initial teacher network. Then, cases for annotation are selected based on the lowest estimated Dice score. Cases with high estimated scores are used as soft pseudo-labels for ST. The selected annotated cases are trained with existing annotated cases and ST cases with border slices annotations. We demonstrate the method on MRI fetal body and placenta segmentation tasks with different data variability characteristics. Our results indicate that ST is highly effective for both tasks, boosting performance for in-distribution (ID) and out-of-distribution (OOD) data. However, while self-training improved the performance of single-sequence fetal body segmentation when combined with AL, it slightly deteriorated performance of multi-sequence placenta segmentation on ID data. AL was helpful for the high variability placenta data, but did not improve upon random selection for the single-sequence body data. For fetal body segmentation sequence transfer, combining AL with ST following ST iteration yielded a Dice of 0.961 with only 6 original scans and 2 new sequence scans. Results using only 15 high-variability placenta cases were similar to those using 50 cases. Code is available at: https://github.com/Bella31/TTA-quality-estimation-ST-AL

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/25/2022

Partial annotations for the segmentation of large structures with low annotation cost

Deep learning methods have been shown to be effective for the automatic ...
research
12/10/2021

Boosting Active Learning via Improving Test Performance

Central to active learning (AL) is what data should be selected for anno...
research
11/21/2022

PartAL: Efficient Partial Active Learning in Multi-Task Visual Settings

Multi-task learning is central to many real-world applications. Unfortun...
research
02/16/2022

FAMIE: A Fast Active Learning Framework for Multilingual Information Extraction

This paper presents FAMIE, a comprehensive and efficient active learning...
research
07/14/2023

Adaptive Region Selection for Active Learning in Whole Slide Image Semantic Segmentation

The process of annotating histological gigapixel-sized whole slide image...
research
10/13/2022

Geometric Active Learning for Segmentation of Large 3D Volumes

Segmentation, i.e., the partitioning of volumetric data into components,...
research
12/03/2022

Active learning using adaptable task-based prioritisation

Supervised machine learning-based medical image computing applications n...

Please sign up or login with your details

Forgot password? Click here to reset