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Learning Cross-Modality Representations From Multi-Modal Images

机译:从多模态图像学习跨模态表示

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Machine learning algorithms can have difficulties adapting to data from different sources, for example from different imaging modalities. We present and analyze three techniques for unsupervised cross-modality feature learning, using a shared autoencoder-like convolutional network that learns a common representation from multi-modal data. We investigate a form of feature normalization, a learning objective that minimizes cross-modality differences, and modality dropout, in which the network is trained with varying subsets of modalities. We measure the same-modality and cross-modality classification accuracies and explore whether the models learn modality-specific or shared features. This paper presents experiments on two public data sets, with knee images from two MRI modalities, provided by the Osteoarthritis Initiative, and brain tumor segmentation on four MRI modalities from the BRATS challenge. All three approaches improved the cross-modality classification accuracy, with modality dropout and per-feature normalization giving the largest improvement. We observed that the networks tend to learn a combination of cross-modality and modality-specific features. Overall, a combination of all three methods produced the most cross-modality features and the highest cross-modality classification accuracy, while maintaining most of the same-modality accuracy.
机译:机器学习算法可能难以适应来自不同来源(例如来自不同成像方式)的数据。我们使用共享的类似自动编码器的卷积网络从多模态数据中学习通用表示形式,介绍并分析了三种用于无监督跨模态特征学习的技术。我们研究了一种特征归一化的形式,一种将跨模式差异最小化的学习目标,以及模态辍学现象,其中使用各种模式子集来训练网络。我们测量同模态和跨模态分类的准确性,并探索模型是否学习模态专有或共享特征。本文介绍了两个公共数据集的实验,包括来自骨关节炎倡议组织的两种MRI方式的膝盖图像,以及来自BRATS挑战的四种MRI方式的脑肿瘤分割。这三种方法均提高了跨模式分类的准确性,其中模式下降和按功能归一化提供了最大的改进。我们观察到,网络倾向于学习交叉模式和特定于模式的功能的组合。总体而言,这三种方法的组合产生了最多的跨模式特征和最高的跨模式分类精度,同时又保持了大多数相同模式的精度。

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