再培训
计算机科学
上传
分割
人工智能
通才与专种
图像分割
训练集
深度学习
航程(航空)
三维模型
图像(数学)
机器学习
计算机视觉
模式识别(心理学)
工程类
生物
业务
航空航天工程
生态学
国际贸易
栖息地
操作系统
作者
Carsen Stringer,Tim Wang,Michalis Michaelos,Marius Pachitariu
标识
DOI:10.1101/2020.02.02.931238
摘要
Many biological applications require the segmentation of cell bodies, membranes and nuclei from microscopy images. Deep learning has enabled great progress on this problem, but current methods are specialized for images that have large training datasets. Here we introduce a generalist, deep learning-based segmentation method called Cellpose, which can precisely segment cells from a wide range of image types and does not require model retraining or parameter adjustments. We trained Cellpose on a new dataset of highly-varied images of cells, containing over 70,000 segmented objects. We also demonstrate a 3D extension of Cellpose which reuses the 2D model and does not require 3D-labelled data. To support community contributions to the training data, we developed software for manual labelling and for curation of the automated results, with optional direct upload to our data repository. Periodically retraining the model on the community-contributed data will ensure that Cellpose improves constantly.
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