NeurIPS2022

MAUNet: Modality-Aware Anti-Ambiguity U-Net for Multi-Modality Cell Segmentation

Wangkai Li, Zhaoyang Li, Rui Sun, Huayu Mai, Naisong Luo, Yuan Wang, Yuwen Pan, Guoxin Xiong, Huakai Lai, Zhiwei Xiong, Tianzhu Zhang

13 citations

Abstract

Automatic cell segmentation enjoys great popularity with the development of deep learning. However, existing methods tend to focus on the binary segmentation between foreground and background in a single domain, but fail to generalize to multi-modality cell images and to exploit numerous valuable unlabeled data. To mitigate these limitations, we propose a Modality-aware Anti-ambiguity U-Net (MAUNet) in a unified deep model via an encoder-decoder structure for robust cell segmentation. The proposed MAUNet model enjoys several merits. First, the proposed instance-aware decode endows pixel features with better cell boundary discrimination capabilities benefiting from cell-wise distance field. And the ambiguity-aware decode aims at alleviating the domain gap caused by multimodality cell images credited to a customized anti-ambiguity proxy for domaininvariant learning. Second, we prepend the consistency regularization to enable exploration of unlabeled images, and a novel post-processing strategy to incorporate morphology prior to cell instance segmentation. Experimental results on the official validation set demonstrate the effectiveness of our method. Code and models are available at https://github.com/Woof6/neurips22-cellseg_saltfish .