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Ensembles of Multiple Models and Architectures for Robust Brain Tumour Segmentation

机译:鲁棒脑肿瘤分割的多种模型和体系结构的集合

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Deep learning approaches such as convolutional neural nets have consistently outperformed previous methods on challenging tasks such as dense, semantic segmentation. However, the various proposed networks perform differently, with behaviour largely influenced by architectural choices and training settings. This paper explores Ensembles of Multiple Models and Architectures (EMMA) for robust performance through aggregation of predictions from a wide range of methods. The approach reduces the influence of the meta-parameters of individual models and the risk of overfitting the configuration to a particular database. EMMA can be seen as an unbiased, generic deep learning model which is shown to yield excellent performance, winning the first position in the BRATS 2017 competition among 50+ participating teams.
机译:诸如卷积神经网络之类的深度学习方法在具有挑战性的任务(例如密集的语义分割)上始终优于先前的方法。但是,各种建议的网络执行方式各不相同,其行为在很大程度上受体系结构选择和培训设置的影响。本文探讨了多种模型和体系结构(EMMA)的集成,以通过汇总来自多种方法的预测来实现稳定的性能。该方法减少了单个模型的元参数的影响以及将配置过度拟合到特定数据库的风险。 EMMA可以看作是一种无偏见的,通用的深度学习模型,它表现出出色的性能,在BRATS 2017竞赛中赢得了50多个参赛团队的第一名。

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