论文标题
CellTranspose:细胞实例分割的几个射击域适应
CellTranspose: Few-shot Domain Adaptation for Cellular Instance Segmentation
论文作者
论文摘要
自动细胞实例分割是在过去的二十年中用于加速生物学研究的过程,而最近的进步产生了更高质量的结果,而生物学家的精力较小。大多数目前的努力都集中在通过产生高度概括的模型来完全将研究人员从图片中删除。但是,当面对新数据时,这些模型总是会失败,分布方式与用于培训的数据不同。与其使用假定大量目标数据和计算能力的方法来解决问题,而是在这项工作中解决了更大的挑战的挑战,即设计一种需要最少新的注释数据以及培训时间的方法。我们通过设计专门的对比损失来做到这一点,从而非常有效地利用了少数注释的样本。大量结果表明,有3到5个注释导致具有准确性的模型:1)显着减轻协变量的效果; 2)匹配或超过其他适应方法; 3)即使使用已在目标分布上进行了完全重新训练的方法。适应训练只有几分钟,为模型性能,计算要求和专家级注释需求之间的平衡铺平了道路。
Automated cellular instance segmentation is a process utilized for accelerating biological research for the past two decades, and recent advancements have produced higher quality results with less effort from the biologist. Most current endeavors focus on completely cutting the researcher out of the picture by generating highly generalized models. However, these models invariably fail when faced with novel data, distributed differently than the ones used for training. Rather than approaching the problem with methods that presume the availability of large amounts of target data and computing power for retraining, in this work we address the even greater challenge of designing an approach that requires minimal amounts of new annotated data as well as training time. We do so by designing specialized contrastive losses that leverage the few annotated samples very efficiently. A large set of results show that 3 to 5 annotations lead to models with accuracy that: 1) significantly mitigate the covariate shift effects; 2) matches or surpasses other adaptation methods; 3) even approaches methods that have been fully retrained on the target distribution. The adaptation training is only a few minutes, paving a path towards a balance between model performance, computing requirements and expert-level annotation needs.