Logo image
U-Mamba2-SSL for Semi-Supervised Tooth and Pulp Segmentation in CBCT
Other

U-Mamba2-SSL for Semi-Supervised Tooth and Pulp Segmentation in CBCT

Zhi Qin Tan, Xiatian Zhu, Owen Addison and Yunpeng Li
arXiv.org
Cornell University Library, arXiv.org
30/09/2025

Abstract

Computed tomography Machine learning Regularization Segmentation Semi-supervised learning Strategy
Accurate segmentation of teeth and pulp in Cone-Beam Computed Tomography (CBCT) is vital for clinical applications like treatment planning and diagnosis. However, this process requires extensive expertise and is exceptionally time-consuming, highlighting the critical need for automated algorithms that can effectively utilize unlabeled data. In this paper, we propose U-Mamba2-SSL, a novel semi-supervised learning framework that builds on the U-Mamba2 model and employs a multi-stage training strategy. The framework first pre-trains U-Mamba2 in a self-supervised manner using a disruptive autoencoder. It then leverages unlabeled data through consistency regularization, where we introduce input and feature perturbations to ensure stable model outputs. Finally, a pseudo-labeling strategy is implemented with a reduced loss weighting to minimize the impact of potential errors. U-Mamba2-SSL achieved an average score of 0.789 and a DSC of 0.917 on the hidden test set, achieving first place in Task 1 of the STSR 2025 challenge. The code is available at https://github.com/zhiqin1998/UMamba2.

Metrics

1 Record Views

Details

Logo image

Usage Policy