分水岭合并森林分类在电镜图像叠加分割中的应用。

Ting Liu, Mojtaba Seyedhosseini, Mark Ellisman, Tolga Tasdizen
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引用次数: 14

摘要

自动电子显微镜(EM)图像分析技术对连接组学的研究有很大的帮助。在本文中,我们扩展了之前的工作[1],并提出了一种全自动的方法来利用交叉信息对EM图像堆栈进行截面内神经元分割。通过分水岭变换构建分水岭合并森林,每棵树表示叠加中一个2D剖面的区域合并层次。学习了一个区段分类器来识别相邻区段之间最可能的区域对应关系。结合这些对应的相交信息来更新树节点的势。我们利用这些势和一致性约束对合并森林进行求解,以获得整个堆栈的最终分割。通过对两种类型的EM图像数据集进行实验,我们证明了我们的方法可以显著提高分割精度。
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WATERSHED MERGE FOREST CLASSIFICATION FOR ELECTRON MICROSCOPY IMAGE STACK SEGMENTATION.

Automated electron microscopy (EM) image analysis techniques can be tremendously helpful for connectomics research. In this paper, we extend our previous work [1] and propose a fully automatic method to utilize inter-section information for intra-section neuron segmentation of EM image stacks. A watershed merge forest is built via the watershed transform with each tree representing the region merging hierarchy of one 2D section in the stack. A section classifier is learned to identify the most likely region correspondence between adjacent sections. The inter-section information from such correspondence is incorporated to update the potentials of tree nodes. We resolve the merge forest using these potentials together with consistency constraints to acquire the final segmentation of the whole stack. We demonstrate that our method leads to notable segmentation accuracy improvement by experimenting with two types of EM image data sets.

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