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Segmentation fusion for connectomics

机译:用于连接组学的分段融合

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We address the problem of automatic 3D segmentation of a stack of electron microscopy sections of brain tissue. Unlike previous efforts, where the reconstruction is usually done on a section-to-section basis, or by the agglomerative clustering of 2D segments, we leverage information from the entire volume to obtain a globally optimal 3D segmentation. To do this, we formulate the segmentation as the solution to a fusion problem. We first enumerate multiple possible 2D segmentations for each section in the stack, and a set of 3D links that may connect segments across consecutive sections. We then identify the fusion of segments and links that provide the most globally consistent segmentation of the stack. We show that this two-step approach of pre-enumeration and posterior fusion yields significant advantages and provides state-of-the-art reconstruction results. Finally, as part of this method, we also introduce a robust rotationally-invariant set of features that we use to learn and enumerate the above 2D segmentations. Our features outperform previous connectomic-specific descriptors without relying on a large set of heuristics or manually designed filter banks.
机译:我们解决了脑组织电子显微镜切片堆栈的自动3D分割问题。与以前的工作不同,在以前的工作中,重建通常是在逐部分的基础上进行的,或者是通过2D片段的聚集性聚类进行的,我们利用整个体积中的信息来获得全局最佳的3D片段。为此,我们将分割公式化为融合问题的解决方案。我们首先枚举堆栈中每个部分的多个可能的2D分段,以及一组3D链接,这些链接可以连接连续部分之间的分段。然后,我们确定段和链接的融合,这些融合提供了堆栈中最全局一致的分段。我们表明,这种预先枚举和后融合的两步方法产生了显着的优势,并提供了最新的重建结果。最后,作为该方法的一部分,我们还介绍了一组鲁棒的旋转不变特征,用于学习和枚举上述2D分割。我们的功能优于以前的特定于连接组的描述符,而无需依赖大量的启发式方法或手动设计的滤波器组。

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