首页> 外文期刊>IEEE Transactions on Pattern Analysis and Machine Intelligence >Globally Optimal Grouping for Symmetric Closed Boundaries by Combining Boundary and Region Information
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Globally Optimal Grouping for Symmetric Closed Boundaries by Combining Boundary and Region Information

机译:结合边界和区域信息的对称闭合边界的全局最优分组

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Many natural and man-made structures have a boundary that shows a certain level of bilateral symmetry, a property that plays an important role in both human and computer vision. In this paper, we present a new grouping method for detecting closed boundaries with symmetry. We first construct a new type of grouping token in the form of symmetric trapezoids by pairing line segments detected from the image. A closed boundary can then be achieved by connecting some trapezoids with a sequence of gap-filling quadrilaterals. For such a closed boundary, we define a unified grouping cost function in a ratio form: the numerator reflects the boundary information of proximity and symmetry and the denominator reflects the region information of the enclosed area. The introduction of the region-area information in the denominator is able to avoid a bias toward shorter boundaries. We then develop a new graph model to represent the grouping tokens. In this new graph model, the grouping cost function can be encoded by carefully designed edge weights and the desired optimal boundary corresponds to a special cycle with a minimum ratio-form cost. We finally show that such a cycle can be found in polynomial time using a previous graph algorithm. We implement this symmetry-grouping method and test it on a set of synthetic data and real images. The performance is compared to two previous grouping methods that do not consider symmetry in their grouping cost functions.
机译:许多天然和人造结构的边界都显示出一定程度的双边对称性,这一特性在人和计算机视觉中都起着重要作用。在本文中,我们提出了一种用于检测具有对称性的闭合边界的新分组方法。我们首先通过对从图像中检测到的线段进行配对来构造对称梯形形式的新型分组令牌。然后可以通过将一些梯形与一系列填充间隙的四边形相连来实现封闭边界。对于这样一个封闭的边界,我们以比率的形式定义一个统一的分组成本函数:分子反映了邻近性和对称性的边界信息,分母反映了封闭区域的区域信息。在分母中引入区域信息可以避免偏向更短的边界。然后,我们开发一个新的图形模型来表示分组标记。在这个新的图形模型中,可以通过精心设计的边缘权重对分组成本函数进行编码,并且所需的最佳边界对应于具有最小比率形式成本的特殊循环。我们最终证明,使用先前的图算法可以在多项式时间内找到这样一个循环。我们实施这种对称分组方法,并在一组合成数据和真实图像上对其进行测试。将性能与之前的两种分组方法(在分组成本函数中不考虑对称性)进行比较。

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