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Scale-Aware Alignment of Hierarchical Image Segmentation

机译:分层图像分割的尺度感知对齐

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Image segmentation is a key component in many computer vision systems, and it is recovering a prominent spot in the literature as methods improve and overcome their limitations. The outputs of most recent algorithms are in the form of a hierarchical segmentation, which provides segmentation at different scales in a single tree-like structure. Commonly, these hierarchical methods start from some low-level features, and are not aware of the scale information of the different regions in them. As such, one might need to work on many different levels of the hierarchy to find the objects in the scene. This work tries to modify the existing hierarchical algorithm by improving their alignment, that is, by trying to modify the depth of the regions in the tree to better couple depth and scale. To do so, we first train a regressor to predict the scale of regions using mid-level features. We then define the anchor slice as the set of regions that better balance between over-segmentation and under-segmentation. The output of our method is an improved hierarchy, re-aligned by the anchor slice. To demonstrate the power of our method, we perform comprehensive experiments, which show that our method, as a post-processing step, can significantly improve the quality of the hierarchical segmentation representations, and ease the usage of hierarchical image segmentation to high-level vision tasks such as object segmentation. We also prove that the improvement generalizes well across different algorithms and datasets, with a low computational cost.
机译:图像分割是许多计算机视觉系统中的关键组成部分,随着方法的改进和克服其局限性,图像分割正逐渐在文献中占据重要地位。最新算法的输出采用分层分段的形式,该分层分段在单个树状结构中提供了不同比例的分段。通常,这些分层方法从一些低级功能开始,并且不了解其中不同区域的比例信息。因此,可能需要在层次结构的许多不同级别上工作才能找到场景中的对象。这项工作试图通过改进现有的分层算法的对齐方式来修改现有的分层算法,即通过尝试修改树中区域的深度以更好地结合深度和比例。为此,我们首先训练回归器,以使用中级特征预测区域的规模。然后,我们将锚定切片定义为在过度分割和分割不足之间取得更好平衡的区域集。我们方法的输出是改进的层次结构,通过锚定切片重新对齐。为了证明我们的方法的强大功能,我们进行了全面的实验,结果表明,作为一种后处理步骤,我们的方法可以显着提高分层分割表示的质量,并简化将分层图像分割用于高级视觉的过程诸如对象分割之类的任务。我们还证明,这种改进在不同的算法和数据集之间具有很好的概括性,而计算成本却很低。

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