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Co-clustering of image segments using convex optimization applied to EM neuronal reconstruction

机译:使用凸优化的EM神经元重建联合图像片段

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This paper addresses the problem of jointly clustering two segmentations of closely correlated images. We focus in particular on the application of reconstructing neuronal structures in over-segmented electron microscopy images. We formulate the problem of co-clustering as a quadratic semi-assignment problem and investigate convex relaxations using semidefinite and linear programming. We further introduce a linear programming method with manageable number of constraints and present an approach for learning the cost function. Our method increases computational efficiency by orders of magnitude while maintaining accuracy, automatically finds the optimal number of clusters, and empirically tends to produce binary assignment solutions. We illustrate our approach in simulations and in experiments with real EM data.
机译:本文解决了将紧密相关图像的两个分割联合聚类的问题。我们特别专注于在过度细分的电子显微镜图像中重建神经元结构的应用。我们将共聚问题公式化为二次半赋值问题,并使用半定线性规划研究凸松弛。我们进一步介绍了具有可管理数量的约束的线性规划方法,并提出了一种学习成本函数的方法。我们的方法在保持精度的同时将计算效率提高了几个数量级,自动找到了最佳的聚类数量,并根据经验倾向于产生二元分配解。我们将在真实的EM数据的仿真和实验中说明我们的方法。

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