Regularization Strategy for Multi-organ Nucleus Segmentation with Localizable Features

2022 19th International Joint Conference on Computer Science and Software Engineering (JCSSE)(2022)

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摘要
Applying color normalization on H&E images is a famous protocol in digital pathology. Recently, the CutMix technique has a strong ability to generalize the classification models. In this paper, we propose the modified CutMix for segmentation tasks. We apply it to the MoNuSeg dataset. The U-Net with a MobileNet backbone is used for training and inferencing. Moreover, we compare it with the traditional color normalization. The results show that our modified CutMix outperformed color normalization with the +0.179 AJI score. It achieved the IoU score faster and got a higher AP for every IoU threshold.
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关键词
Nucleus segmentation,Deep Learning,Regular-ization Strategy,CutMix,Color Normalization
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