鉴别器
分割
计算机科学
人工智能
对抗制
试验数据
领域(数学分析)
模式识别(心理学)
机器学习
人工神经网络
域适应
数学
电信
数学分析
探测器
分类器(UML)
程序设计语言
作者
Konstantinos Kamnitsas,Christian F. Baumgartner,Christian Ledig,Virginia Newcombe,Joanna Simpson,Andrew D. Kane,David Menon,Aditya Nori,Antonio Criminisi,Daniel Rueckert,Ben Glocker
出处
期刊:Cornell University - arXiv
日期:2016-01-01
被引量:9
标识
DOI:10.48550/arxiv.1612.08894
摘要
Significant advances have been made towards building accurate automatic segmentation systems for a variety of biomedical applications using machine learning. However, the performance of these systems often degrades when they are applied on new data that differ from the training data, for example, due to variations in imaging protocols. Manually annotating new data for each test domain is not a feasible solution. In this work we investigate unsupervised domain adaptation using adversarial neural networks to train a segmentation method which is more invariant to differences in the input data, and which does not require any annotations on the test domain. Specifically, we learn domain-invariant features by learning to counter an adversarial network, which attempts to classify the domain of the input data by observing the activations of the segmentation network. Furthermore, we propose a multi-connected domain discriminator for improved adversarial training. Our system is evaluated using two MR databases of subjects with traumatic brain injuries, acquired using different scanners and imaging protocols. Using our unsupervised approach, we obtain segmentation accuracies which are close to the upper bound of supervised domain adaptation.
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