Active learning for medical image segmentation with stochastic batches
M\'elanie Gaillochet, Christian Desrosiers, and Herv\'e Lombaert

TL;DR
This paper introduces a stochastic batch sampling method to enhance uncertainty-based active learning for medical image segmentation, significantly outperforming traditional sampling strategies and serving as a robust baseline.
Contribution
It proposes a novel stochastic batch sampling approach that improves uncertainty-based active learning for medical image segmentation tasks.
Findings
Consistently improves uncertainty-based sampling methods
Outperforms random sampling baselines
Provides a strong baseline for future research
Abstract
The performance of learning-based algorithms improves with the amount of labelled data used for training. Yet, manually annotating data is particularly difficult for medical image segmentation tasks because of the limited expert availability and intensive manual effort required. To reduce manual labelling, active learning (AL) targets the most informative samples from the unlabelled set to annotate and add to the labelled training set. On the one hand, most active learning works have focused on the classification or limited segmentation of natural images, despite active learning being highly desirable in the difficult task of medical image segmentation. On the other hand, uncertainty-based AL approaches notoriously offer sub-optimal batch-query strategies, while diversity-based methods tend to be computationally expensive. Over and above methodological hurdles, random sampling has…
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Taxonomy
TopicsMachine Learning and Algorithms · Machine Learning and Data Classification · Algorithms and Data Compression
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
