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A new graph matching method for point-set correspondence using the EM algorithm and Softassign

机译:基于EM算法和Softassign的点集对应图匹配新方法。

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摘要

Finding correspondences between two point-sets is a common step in many vision applications (e.g., image matching or shape retrieval). We present a graph matching method to solve the point-set correspondence problem, which is posed as one of mixture modelling. Our mixture model encompasses a model of structural coherence and a model of affine-invariant geometrical errors. Instead of absolute positions, the geometrical positions are represented as relative positions of the points with respect to each other. We derive the Expectation-Maximization algorithm for our mixture model. In this way, the graph matching problem is approximated, in a principled way, as a succession of assignment problems which are solved using Softassign. Unlike other approaches, we use a true continuous underlying correspondence variable. We develop effective mechanisms to detect outliers. This is a useful technique for improving results in the presence of clutter. We evaluate the ability of our method to locate proper matches as well as to recognize object categories in a series of registration and recognition experiments. Our method compares favourably to other graph matching methods as well as to point-set registration methods and outlier rejectors.
机译:在许多视觉应用中(例如,图像匹配或形状检索),找到两个点集之间的对应关系是通常的步骤。我们提出了一种图形匹配方法来解决点集对应问题,这被称为混合建模之一。我们的混合模型包括结构一致性模型和仿射不变几何误差模型。代替绝对位置,将几何位置表示为点相对于彼此的相对位置。我们为我们的混合模型导出了期望最大化算法。通过这种方式,图匹配问题在原则上被近似为使用Softassign解决的一系列分配问题。与其他方法不同,我们使用真正的连续基础对应变量。我们开发了有效的机制来检测异常值。这是在杂波存在时改善结果的有用技术。我们评估了我们的方法在一系列注册和识别实验中找到合适匹配以及识别对象类别的能力。我们的方法优于其他图形匹配方法,点集套准方法和异常剔除器。

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