All-in-SAM:从弱注释到基于提示微调的逐像素核分割。

Can Cui, Ruining Deng, Quan Liu, Tianyuan Yao, Shunxing Bao, Lucas W Remedios, Bennett A Landman, Yucheng Tang, Yuankai Huo
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引用次数: 0

摘要

分段任意模型(SAM)是近年来提出的一种基于提示的通用零分方法的分段模型。凭借零射击分割能力,SAM在各种分割任务上取得了令人印象深刻的灵活性和精度。然而,目前的流水线在推理阶段需要人工提示,这对于生物医学图像分割来说仍然是资源密集型的。在本文中,我们没有在推理阶段使用提示,而是引入了一个利用SAM的管道,称为all-in-SAM,通过整个AI开发工作流(从注释生成到模型微调),而不需要在推理阶段使用手动提示。具体来说,首先使用SAM从弱提示(例如,点、边界框)生成像素级注释。然后,使用像素级注释来微调SAM分割模型,而不是从头开始训练。我们的实验结果揭示了两个关键发现:1)所提出的管道在公共Monuseg数据集上的核分割任务中超过了最先进的方法;2)与使用强像素注释数据相比,使用弱和少注释进行SAM微调获得了具有竞争力的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

All-in-SAM: from Weak Annotation to Pixel-wise Nuclei Segmentation with Prompt-based Finetuning.

All-in-SAM: from Weak Annotation to Pixel-wise Nuclei Segmentation with Prompt-based Finetuning.

All-in-SAM: from Weak Annotation to Pixel-wise Nuclei Segmentation with Prompt-based Finetuning.

All-in-SAM: from Weak Annotation to Pixel-wise Nuclei Segmentation with Prompt-based Finetuning.

The Segment Anything Model (SAM) is a recently proposed prompt-based segmentation model in a generic zero-shot segmentation approach. With the zero-shot segmentation capacity, SAM achieved impressive flexibility and precision on various segmentation tasks. However, the current pipeline requires manual prompts during the inference stage, which is still resource intensive for biomedical image segmentation. In this paper, instead of using prompts during the inference stage, we introduce a pipeline that utilizes the SAM, called all-in-SAM, through the entire AI development workflow (from annotation generation to model finetuning) without requiring manual prompts during the inference stage. Specifically, SAM is first employed to generate pixel-level annotations from weak prompts (e.g., points, bounding box). Then, the pixel-level annotations are used to finetune the SAM segmentation model rather than training from scratch. Our experimental results reveal two key findings: 1) the proposed pipeline surpasses the state-of-the-art methods in a nuclei segmentation task on the public Monuseg dataset, and 2) the utilization of weak and few annotations for SAM finetuning achieves competitive performance compared to using strong pixelwise annotated data.

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