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A Geometric Approach to Image Labeling

机译:图像标签的几何方法

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We introduce a smooth non-convex approach in a novel geometric framework which complements established convex and non-convex approaches to image labeling. The major underlying concept is a smooth manifold of probabilistic assignments of a prespecified set of prior data (the "labels") to given image data. The Riemannian gradient flow with respect to a corresponding objective function evolves on the manifold and terminates, for any δ > 0, within a δ-neighborhood of an unique assignment (labeling). As a consequence, unlike with convex outer relaxation approaches to (non-submodular) image labeling problems, no post-processing step is needed for the rounding of fractional solutions. Our approach is numerically implemented with sparse, highly-parallel interior-point updates that efficiently converge, largely independent from the number of labels. Experiments with noisy labeling and inpainting problems demonstrate competitive performance.
机译:我们在新的几何框架中引入了一种平滑的非凸法方法,该方法补充了成立的凸起和非凸面的图像标记方法。主要潜在的概念是预先分配的先前数据(“标签”)的概率分配的概率分配的平滑歧管,给给定图像数据。相对于相应的目标函数的Riemannian梯度流动在歧管上演化并在唯一分配(标签)的Δ相邻内的任何δ>终止。结果,与(非子骨析)图像标记问题的凸外松弛方法不同,不需要舍入分数解决方案的后处理步骤。我们的方法是用稀疏,高度平行的内部点更新进行数值实现,可有效地收敛,主要是独立于标签的数量。嘈杂标签和污点问题的实验表明了竞争性能。

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