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Active Learning for Delineation of Curvilinear Structures

机译:主动学习描绘曲线结构

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Many recent delineation techniques owe much of their increased effectiveness to path classification algorithms that make it possible to distinguish promising paths from others. The downside of this development is that they require annotated training data, which is tedious to produce. In this paper, we propose an Active Learning approach that considerably speeds up the annotation process. Unlike standard ones, it takes advantage of the specificities of the delineation problem. It operates on a graph and can reduce the training set size by up to 80% without compromising the reconstruction quality. We will show that our approach outperforms conventional ones on various biomedical and natural image datasets, thus showing that it is broadly applicable.
机译:许多最新的划定技术都将其提高的有效性归功于路径分类算法,该算法可将有希望的路径与其他路径区分开。这种发展的不利之处在于,他们需要带注释的培训数据,而这些数据很繁琐。在本文中,我们提出了一种主动学习方法,可以大大加快注释过程。与标准方法不同,它利用了定界问题的特殊性。它可以在图形上运行,并且可以在不影响重建质量的情况下将训练集的大小减少多达80%。我们将证明我们的方法在各种生物医学和自然图像数据集上都优于传统方法,从而表明它具有广泛的适用性。

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