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Superpixel Graph Label Transfer with Learned Distance Metric

机译:Superpixel图表标签转移与学习距离度量

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We present a fast approximate nearest neighbor algorithm for semantic segmentation. Our algorithm builds a graph over superpixels from an annotated set of training images. Edges in the graph represent approximate nearest neighbors in feature space. At test time we match superpixels from a novel image to the training images by adding the novel image to the graph. A move-making search algorithm allows us to leverage the graph and image structure for finding matches. We then transfer labels from the training images to the image under test. To promote good matches between superpixels we propose to learn a distance metric that weights the edges in our graph. Our approach is evaluated on four standard semantic segmentation datasets and achieves results comparable with the state-of-the-art.
机译:我们提出了一种用于语义分割的快速近似邻邻算法。 我们的算法在批注的训练图像集中构建了超像素的图形。 图中的边缘表示特征空间中的近似邻居。 在测试时间,我们通过将新颖的图像添加到图形来与训练图像相匹配到训练图像。 移动制作的搜索算法允许我们利用图形和图像结构来查找匹配。 然后,我们将标签从训练图像转移到被测图像。 为了促进超像素之间的良好比赛,我们建议学习将边缘中的边缘重量的距离度量。 我们的方法是在四个标准语义分段数据集上进行评估,并实现与最先进的结果相当的结果。

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