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M-AMST: an automatic 3D neuron tracing method based on mean shift and adapted minimum spanning tree

机译:M-AMST:一种基于均值漂移和自适应最小生成树的自动3D神经元跟踪方法

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摘要

BackgroundUnderstanding the working mechanism of the brain is one of the grandest challenges for modern science. Toward this end, the BigNeuron project was launched to gather a worldwide community to establish a big data resource and a set of the state-of-the-art of single neuron reconstruction algorithms. Many groups contributed their own algorithms for the project, including our mean shift and minimum spanning tree (M-MST). Although M-MST is intuitive and easy to implement, the MST just considers spatial information of single neuron and ignores the shape information, which might lead to less precise connections between some neuron segments. In this paper, we propose an improved algorithm, namely M-AMST, in which a rotating sphere model based on coordinate transformation is used to improve the weight calculation method in M-MST.
机译:背景技术了解大脑的工作机制是现代科学面临的最大挑战之一。为此,发起了BigNeuron项目,以聚集世界各地的社区以建立大数据资源和一组最新的单神经元重建算法。许多小组为此项目贡献了自己的算法,包括我们的均值漂移和最小生成树(M-MST)。尽管M-MST直观且易于实现,但是MST仅考虑单个神经元的空间信息,而忽略形状信息,这可能导致某些神经元段之间的连接不那么精确。在本文中,我们提出了一种改进的算法,即M-AMST,其中使用了基于坐标变换的旋转球模型来改进M-MST中的权重计算方法。

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