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Efficient Optimization for Hierarchically-Structured Interacting Segments (HINTS)

机译:高效优化分层结构的相互作用段(提示)

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We propose an effective optimization algorithm for a general hierarchical segmentation model with geometric interactions between segments. Any given tree can specify a partial order over object labels defining a hierarchy. It is well-established that segment interactions, such as inclusion/exclusion and margin constraints, make the model significantly more discriminant. However, existing optimization methods do not allow full use of such models. Generic a-expansion results in weak local minima, while common binary multi-layered formulations lead to non-submodularity, complex high-order potentials, or polar domain unwrapping and shape biases. In practice, applying these methods to arbitrary trees does not work except for simple cases. Our main contribution is an optimization method for the Hierarchically-structured Interacting Segments (HINTS) model with arbitrary trees. Our Path-Moves algorithm is based on multi-label MRF formulation and can be seen as a combination of well-known a-expansion and Ishikawa techniques. We show state-of-the-art biomedical segmentation for many diverse examples of complex trees.
机译:我们提出了一种具有段几何相互作用的一般分层分段模型的有效优化算法。任何给定的树都可以在定义层次结构的对象标签上指定部分顺序。已经确定地确定了段相互作用,例如包含/排除和保证金约束,使模型显着判别。但是,现有的优化方法不允许充分利用这些模型。通用A扩展导致局部最小值弱,而常见的二进制多层配方导致非亚骨折,复杂的高阶电位或极地域展开和形状偏差。在实践中,除了简单的情况外,将这些方法应用于任意树木不起作用。我们的主要贡献是具有任意树木的分层结构化交互段(提示)模型的优化方法。我们的路径移动算法基于多标签MRF配方,可以被视为众所周知的A-A-膨胀和ISHikawa技术的组合。对于许多复杂树木的不同示例,我们向最先进的生物医学细分显示了最先进的生物医学细分。

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