2022
DOI: 10.48550/arxiv.2210.13109
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WDA-Net: Weakly-Supervised Domain Adaptive Segmentation of Electron Microscopy

Abstract: Accurate segmentation of organelle instances is essential for electron microscopy analysis. Despite the outstanding performance of fully supervised methods, they highly rely on sufficient per-pixel annotated data and are sensitive to domain shift. Aiming to develop a highly annotation-efficient approach with competitive performance, we focus on weakly-supervised domain adaptation (WDA) with a type of extremely sparse and weak annotation demanding minimal annotation efforts, i.e., sparse point annotations on on… Show more

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