Robust One-shot Segmentation of Brain Tissues via Image-aligned Style Transformation
Jinxin Lv, Xiaoyu Zeng, Sheng Wang, Ran Duan, Zhiwei Wang, and Qiang, Li

TL;DR
This paper introduces a novel style transformation technique that enhances one-shot brain tissue segmentation by ensuring spatial alignment and style consistency, leading to improved accuracy over existing methods.
Contribution
The proposed image-aligned style transformation method improves one-shot segmentation by maintaining spatial correspondence and style diversity, outperforming state-of-the-art approaches.
Findings
Achieves competitive segmentation performance compared to fully-supervised methods.
Outperforms existing state-of-the-art methods with up to 4.67% higher Dice score.
Demonstrates robustness and effectiveness on two public datasets.
Abstract
One-shot segmentation of brain tissues is typically a dual-model iterative learning: a registration model (reg-model) warps a carefully-labeled atlas onto unlabeled images to initialize their pseudo masks for training a segmentation model (seg-model); the seg-model revises the pseudo masks to enhance the reg-model for a better warping in the next iteration. However, there is a key weakness in such dual-model iteration that the spatial misalignment inevitably caused by the reg-model could misguide the seg-model, which makes it converge on an inferior segmentation performance eventually. In this paper, we propose a novel image-aligned style transformation to reinforce the dual-model iterative learning for robust one-shot segmentation of brain tissues. Specifically, we first utilize the reg-model to warp the atlas onto an unlabeled image, and then employ the Fourier-based amplitude…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning · Advanced Neural Network Applications · Medical Imaging and Analysis
