Finally Outshining the Random Baseline: A Simple and Effective Solution for Active Learning in 3D Biomedical Imaging
Carsten T. L\"uth, Jeremias Traub, Kim-Celine Kahl, Till J. Bungert, Lukas Klein, Lars Kr\"amer, Paul F. J\"ager, Klaus Maier-Hein, Fabian Isensee

TL;DR
This paper introduces ClaSP PE, a simple active learning strategy for 3D biomedical image segmentation that outperforms random baselines, generalizes well, and reduces annotation costs.
Contribution
We propose ClaSP PE, a novel active learning method that addresses class imbalance and redundancy, outperforming random baselines in 3D biomedical segmentation tasks.
Findings
ClaSP PE outperforms random baselines in segmentation quality.
The method generalizes to unseen datasets without tuning.
It maintains annotation efficiency across experiments.
Abstract
Active learning (AL) has the potential to drastically reduce annotation costs in 3D biomedical image segmentation, where expert labeling of volumetric data is both time-consuming and expensive. Yet, existing AL methods are unable to consistently outperform improved random sampling baselines adapted to 3D data, leaving the field without a reliable solution. We introduce Class-stratified Scheduled Power Predictive Entropy (ClaSP PE), a simple and effective query strategy that addresses two key limitations of standard uncertainty-based AL methods: class imbalance and redundancy in early selections. ClaSP PE combines class-stratified querying to ensure coverage of underrepresented structures and log-scale power noising with a decaying schedule to enforce query diversity in early-stage AL and encourage exploitation later. In our evaluation on 24 experimental settings using four 3D biomedical…
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Taxonomy
TopicsMachine Learning and Algorithms · Advanced Neural Network Applications · Machine Learning in Materials Science
