广义形状对齐的全局优化

Hongsheng Li, Tian Shen, Xiaolei Huang
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引用次数: 14

摘要

本文提出了一种求解全局形状配准问题的新算法。我们使用灰度“图像”来表示源形状,并提出了一种新的双分量高斯混合(GM)距离图表示目标形状。基于这种灵活的非对称图像表示,定义了一个新的能量函数。结果表明,该方法具有较强的鲁棒性和计算效率。这种高效率对于全局优化方法是必不可少的。我们采用其中的粒子群算法(PSO)来有效估计新能量函数的全局最优。在广义形状数据(包括连续形状、非结构化稀疏点集和梯度图)上进行的实验和比较,证明了该算法的鲁棒性和有效性。
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Global optimization for alignment of generalized shapes
In this paper, we introduce a novel algorithm to solve global shape registration problems. We use gray-scale “images” to represent source shapes, and propose a novel two-component Gaussian Mixtures (GM) distance map representation for target shapes. Based on this flexible asymmetric image-based representation, a new energy function is defined. It proves to be a more robust shape dissimilarity metric that can be computed efficiently. Such high efficiency is essential for global optimization methods. We adopt one of them, the Particle Swarm Optimization (PSO), to effectively estimate the global optimum of the new energy function. Experiments and comparison performed on generalized shape data including continuous shapes, unstructured sparse point sets, and gradient maps, demonstrate the robustness and effectiveness of the algorithm.
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