Department of Computer Science, Albert-Ludwigs-University, Freiburg, Germany.
BIOSS Centre for Biological Signalling Studies, Freiburg, Germany.
Nat Methods. 2019 Jan;16(1):67-70. doi: 10.1038/s41592-018-0261-2. Epub 2018 Dec 17.
U-Net is a generic deep-learning solution for frequently occurring quantification tasks such as cell detection and shape measurements in biomedical image data. We present an ImageJ plugin that enables non-machine-learning experts to analyze their data with U-Net on either a local computer or a remote server/cloud service. The plugin comes with pretrained models for single-cell segmentation and allows for U-Net to be adapted to new tasks on the basis of a few annotated samples.
U-Net 是一种通用的深度学习解决方案,常用于生物医学图像数据中的细胞检测和形状测量等常见量化任务。我们提供了一个 ImageJ 插件,使非机器学习专家能够在本地计算机或远程服务器/云服务上使用 U-Net 分析他们的数据。该插件带有单细胞分割的预训练模型,并允许根据几个标注样本对 U-Net 进行新任务的适配。