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Efficiently Solving the Fractional Trust Region Problem

机译:有效地解决分数信任区域问题

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Normalized Cuts has successfully been applied to a wide range of tasks in computer vision, it is indisputably one of the most popular segmentation algorithms in use today. A number of extensions to this approach have also been proposed, ones that can deal with multiple classes or that can incorporate a priori information in the form of grouping constraints. It was recently shown how a general linearly constrained Normalized Cut problem can be solved. This was done by proving that strong duality holds for the Lagrangian relaxation of such problems. This provides a principled way to perform multi-class partitioning while enforcing any linear constraints exactly.
机译:归一化切割已成功应用于计算机视觉中的广泛任务,它无可争议地是当今使用的最流行的分段算法之一。还提出了对这种方法的许多扩展,可以处理多个类或可以以分组约束的形式结合先验信息。最近显示了如何解决一般线性约束的标准化切割问题。这是通过证明强烈的二元性来实现拉格朗日放松这些问题。这提供了一个原理的方法来执行多级分区,同时完全强制执行任何线性约束。

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