水像素:基于分水岭变换的超像素

V. Machairas, Etienne Decencière, Thomas Walter
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引用次数: 32

摘要

许多复杂的分割算法依赖于第一个低级分割步骤,其中图像被划分为具有强制紧凑性和遵循对象边界的均匀区域。这些区域被称为“超像素”。虽然标记控制的分水岭转换原则上应该非常适合这种类型的应用,但它从未在这种设置中进行过认真的测试,并且没有在最佳设置下与其他方法进行比较。在这里,我们提供了一种将分水岭变换应用于超像素生成的方案,其中我们使用空间正则化梯度来实现超像素规律性和对对象边界的依从性之间的可调权衡。我们在伯克利分割数据库上定量地评估了我们的方法,并表明我们获得了与先前发布的最先进算法相当的结果,同时避免了后者所需的一些任意后处理步骤。
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Waterpixels: Superpixels based on the watershed transformation
Many sophisticated segmentation algorithms rely on a first low-level segmentation step where an image is partitioned into homogeneous regions with enforced compactness and adherence to object boundaries. These regions are called “superpixels”. While the marker controlled watershed transformation should in principle be well suited for this type of application, it has never been seriously tested in this setup, and comparisons to other methods were not made with the best possible settings. Here, we provide a scheme for applying the watershed transform for superpixel generation, where we use a spatially regularized gradient to achieve a tunable trade-off between superpixel regularity and adherence to object boundaries. We quantitatively evaluate our method on the Berkeley segmentation database and show that we achieve comparable results to a previously published state-of-the art algorithm, while avoiding some of the arbitrary postprocessing steps the latter requires.
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