3.8 Proceedings Paper

Learning with Noise: Mask-Guided Attention Model for Weakly Supervised Nuclei Segmentation

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SPRINGER INTERNATIONAL PUBLISHING AG
DOI: 10.1007/978-3-030-87196-3_43

Keywords

Nuclei segmentation; Weakly supervised learning; Noisy labels; Point annotations

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A weakly supervised learning method for nuclei segmentation that only requires annotation of the nuclear centroid was proposed, which utilized a mask-guided attention auxiliary network and Confident Learning to improve pixel-level labels, achieving highly competitive performance on two public datasets for cell nuclei segmentation.
Deep convolutional neural networks have been highly effective in segmentation tasks. However, high performance often requires large datasets with high-quality annotations, especially for segmentation, which requires precise pixel-wise labelling. The difficulty of generating high-quality datasets often constrains the improvement of research in such areas. To alleviate this issue, we propose a weakly supervised learning method for nuclei segmentation that only requires annotation of the nuclear centroid. To train the segmentation model with point annotations, we first generate boundary and superpixel-based masks as pseudo ground truth labels to train a segmentation network that is enhanced by a mask-guided attention auxiliary network. Then to further improve the accuracy of supervision, we apply Confident Learning to correct the pseudo labels at the pixel-level for a refined training. Our method shows highly competitive performance of cell nuclei segmentation in histopathology images on two public datasets. Our code is available at: https://github.com/RuoyuGuo/MaskGA_Net.

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