作者
Nicholas Konz, Hanxue Gu, Haoyu Dong, Maciej A Mazurowski
发表日期
2022/9/16
图书
International Conference on Medical Image Computing and Computer-Assisted Intervention
页码范围
684-694
出版商
Springer Nature Switzerland
简介
The manifold hypothesis is a core mechanism behind the success of deep learning, so understanding the intrinsic manifold structure of image data is central to studying how neural networks learn from the data. Intrinsic dataset manifolds and their relationship to learning difficulty have recently begun to be studied for the common domain of natural images, but little such research has been attempted for radiological images. We address this here. First, we compare the intrinsic manifold dimensionality of radiological and natural images. We also investigate the relationship between intrinsic dimensionality and generalization ability over a wide range of datasets. Our analysis shows that natural image datasets generally have a higher number of intrinsic dimensions than radiological images. However, the relationship between generalization ability and intrinsic dimensionality is much stronger for medical images, which …
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N Konz, H Gu, H Dong, MA Mazurowski - International Conference on Medical Image Computing …, 2022