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Per-pixel translational symmetry detection, optimization, and segmentation

机译:每像素平移对称性检测,优化和分割

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摘要

We present a novel method for translational symmetry detection, optimization, and symmetry object segmentation in façade images. Unlike most previous methods, our detection algorithm accumulates pixel-level correspondence in translation space. Thus it does not rely on feature point detection and handles patterns with low repetition counts. To improve the robustness with multiple interfering symmetries, we introduce an image-space global optimization, which resolves multiple per-pixel symmetry lattices. We then propose a learning-based method that generates refined segmentation of foreground symmetry objects of arbitrary shapes, with the aid of the per-pixel symmetry information. Our proposed method is accurate, robust and efficient as demonstrated by an extensive evaluation using a large façade image database.
机译:我们提出了一种新颖的方法,用于对立面图像进行平移对称性检测,优化和对称对象分割。与大多数以前的方法不同,我们的检测算法会在翻译空间中累积像素级对应关系。因此,它不依赖特征点检测,并且可以处理重复次数较少的模式。为了提高具有多个干扰对称性的鲁棒性,我们引入了一个图像空间全局优化,该优化解决了每个像素对称的多个晶格。然后,我们提出了一种基于学习的方法,该方法借助每个像素的对称信息生成任意形状的前景对称对象的精细分割。我们建议的方法是准确,鲁棒和高效的,通过使用大型立面图像数据库进行的广泛评估证明了这一点。

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