空间适应性随机森林

Ezequiel Geremia, Bjoern H Menze, N. Ayache
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引用次数: 54

摘要

医学成像协议产生大量的多模态体积图像。数据集的大规模有助于监督判别方法在语义图像分割中的成功。由于(a)数据量大,(b)特征空间中严重的类重叠,对医学图像中的相关结构进行分类是具有挑战性的。对训练数据进行子采样解决了第一个问题,但代价是丢弃了可能有用的图像信息。增加特征维数解决了第二个问题,但需要密集采样。我们对这些问题提出了一个通用而有效的解决方案。“空间自适应随机森林”(SARF)是一种监督学习算法。SARF的目标是自动语义标注大量的医疗卷。在训练过程中,学习与分类任务相关联的最优图像采样。在测试过程中,该算法快速处理背景,并聚焦具有挑战性的图像区域,以改进分类。SARF在多模态MR图像的多类胶质瘤分割中表现出最佳性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spatially Adaptive Random Forests
Medical imaging protocols produce large amounts of multimodal volumetric images. The large size of the datasets contributes to the success of supervised discriminative methods for semantic image segmentation. Classifying relevant structures in medical images is challenging due to (a) the large size of data volumes, and (b) the severe class overlap in the feature space. Subsampling the training data addresses the first issue at the cost of discarding potentially useful image information. Increasing feature dimensionality addresses the second but requires dense sampling. We propose a general and efficient solution to these problems. “Spatially Adaptive Random Forests” (SARF) is a supervised learning algorithm. SARF aims at automatic semantic labelling of large medical volumes. During training, it learns the optimal image sampling associated to the classification task. During testing, the algorithm quickly handles the background and focuses challenging image regions to refine the classification. SARF demonstrated top performance in the context of multi-class gliomas segmentation in multi-modal MR images.
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