论文标题

从自然图像到病理图像可以转移多少现成的知识?

How Much Off-The-Shelf Knowledge Is Transferable From Natural Images To Pathology Images?

论文作者

Li, Xingyu, Plataniotis, Konstantinos N.

论文摘要

深度学习在自然图像分类方面取得了巨大的成功。为了克服计算病理学中的数据 - 核心,最近的研究利用了转移学习以从病理图像分析中从自然图像中获得的知识重复使用,旨在构建有效的病理图像诊断模型。由于知识的可传递性在很大程度上取决于原始任务和目标任务的相似性,因此病理图像和自然图像之间图像内容和统计数据的显着差异提出了问题:可转移多少知识?转移的信息是否同样由预训练的层贡献?为了回答这些问题,本文提出了一个框架,以通过特定层来量化知识增益,在病理图像中心转移学习方面进行了经验研究,并报告了一些有趣的观察结果。特别是,与随机重量模型获得的性能基线相比,尽管从深层中的现成表示形式的可传递性在很大程度上取决于特定的病理图像集,但早期层生成的一般表示确实传达了各种图像分类应用中传递的知识。这项研究的观察结果鼓励对特定指标和工具进行进一步研究,以量化未来转移学习的有效性和可行性。

Deep learning has achieved a great success in natural image classification. To overcome data-scarcity in computational pathology, recent studies exploit transfer learning to reuse knowledge gained from natural images in pathology image analysis, aiming to build effective pathology image diagnosis models. Since transferability of knowledge heavily depends on the similarity of the original and target tasks, significant differences in image content and statistics between pathology images and natural images raise the questions: how much knowledge is transferable? Is the transferred information equally contributed by pre-trained layers? To answer these questions, this paper proposes a framework to quantify knowledge gain by a particular layer, conducts an empirical investigation in pathology image centered transfer learning, and reports some interesting observations. Particularly, compared to the performance baseline obtained by random-weight model, though transferability of off-the-shelf representations from deep layers heavily depend on specific pathology image sets, the general representation generated by early layers does convey transferred knowledge in various image classification applications. The observation in this study encourages further investigation of specific metric and tools to quantify effectiveness and feasibility of transfer learning in future.

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