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Multi-classifier framework for atlas-based image segmentation

机译:用于基于图集的图像分割的多分类器框架

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摘要

Three different systematic approaches to generate multiple classifiers in atlas-based biomedical image segmentation are compared. Different atlases, as well as different parametrization of the registration algorithm, lead to different atlas-based classifiers. The classifier outputs are combined and compared to a manual ground truth segmentation. Classifier combination consistently improved classification accuracy with the biggest improvement from multiple atlases. We conclude that multi-classifier techniques have a natural application to atlas-based segmentation and increase classification accuracy in real-world segmentation problems.
机译:比较了在基于图集的生物医学图像分割中生成多个分类器的三种不同的系统方法。不同的图集以及配准算法的不同参数化导致不同的基于图集的分类器。组合分类器输出,并将其与手动地面真相分段进行比较。分类器组合不断提高分类准确性,而多个地图集的改进最大。我们得出的结论是,多分类器技术已自然应用于基于图集的分割,并提高了实际分割问题中的分类准确性。

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