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Active Learning and Proofreading for Delineation of Curvilinear Structures

机译:主动学习与校对曲线结构

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Many state-of-the-art delineation methods rely on supervised machine learning algorithms. As a result, they require manually annotated training data, which is tedious to obtain. Furthermore, even minor classification errors may significantly affect the topology of the final result. In this paper we propose a generic approach to addressing both of these problems by taking into account the influence of a potential misclassification on the resulting delineation. In an Active Learning context, we identify parts of linear structures that should be annotated first in order to train a classifier effectively. In a proofreading context, we similarly find regions of the resulting reconstruction that should be verified in priority to obtain a nearly-perfect result. In both cases, by focusing the attention of the human expert on potential classification mistakes which are the most critical parts of the delineation, we reduce the amount of required supervision. We demonstrate the effectiveness of our approach on microscopy images depicting blood vessels and neurons.
机译:许多最先进的描绘方法都依赖于监督的机器学习算法。结果,他们需要手动添加注释的训练数据,这很繁琐。此外,即使是很小的分类错误也可能会严重影响最终结果的拓扑。在本文中,我们提出了一种通用方法来解决这两个问题,方法是考虑到潜在的错误分类对所得划界的影响。在主动学习环境中,我们确定应该首先注释的线性结构部分,以便有效地训练分类器。在校对的情况下,我们类似地找到生成的重构区域,应对其进行优先验证以获取接近完美的结果。在这两种情况下,通过将人类专家的注意力集中在潜在的分类错误上,这些错误是描述中最关键的部分,我们减少了所需的监督量。我们在描绘血管和神经元的显微镜图像上证明了我们的方法的有效性。

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