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Globally Optimal Joint Image Segmentation and Shape Matching Based on Wasserstein Modes

机译:基于Wasserstein模式的全局最优联合图像分割和形状匹配

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摘要

A functional for joint variational object segmentation and shape matching is developed. The formulation is based on optimal transport w.r.t. geometric distance and local feature similarity. Geometric invariance and modelling of object-typical statistical variations is achieved by introducing degrees of freedom that describe transformations and deformations of the shape template. The shape model is mathematically equivalent to contour-based approaches but inference can be performed without conversion between the contour and region representations, allowing combination with other convex segmentation approaches and simplifying optimization. While the overall functional is non-convex, non-convexity is confined to a low-dimensional variable. We propose a locally optimal alternating optimization scheme and a globally optimal branch and bound scheme, based on adaptive convex relaxation. Combining both methods allows to eliminate the delicate initialization problem inherent to many contour based approaches while remaining computationally practical. The properties of the functional, its ability to adapt to a wide range of input data structures and the different optimization schemes are illustrated and compared by numerical experiments.
机译:开发了用于联合可变对象分割和形状匹配的功能。该配方基于最佳运输重量几何距离和局部特征相似度。通过引入描述形状模板的变形和变形的自由度,可以实现几何不变性和典型对象统计变化的建模。形状模型在数学上等效于基于轮廓的方法,但是可以在轮廓和区域表示之间不进行转换的情况下进行推理,从而可以与其他凸分割方法组合并简化优化。虽然整体功能是非凸的,但非凸性仅限于低维变量。我们提出了基于自适应凸松弛的局部最优交替优化方案和全局最优分支定界方案。结合这两种方法可以消除许多基于轮廓的方法固有的微妙初始化问题,同时保持计算上的实用性。通过数值实验说明并比较了该功能的特性,其适应各种输入数据结构的能力以及不同的优化方案。

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