GA-Based Affine PPM Using Matrix Polar Decomposition

M. Ezoji, K. Faez, H. Kanan, S. Mozaffari
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引用次数: 1

Abstract

Point pattern matching (PPM) arises in areas such as pattern recognition, digital video processing and computer vision. In this study, a novel Genetic Algorithm (GA) based method for matching affine-related point sets is described. Most common techniques for solving the PPM problem, consist in determining the correspondence between points localized spatially within two sets and then find the proper transformation parameters, using a set of equations. In this paper, we use this fact that the correspondence and transformation matrices are two unitary polar factors of Grammian matrices. We estimate one of these factors by the GA's population and then evaluate this estimation by computing an error function using another factor. This approach is an easily implemented one and because of using the GA in it, its computational complexity is lower than other known methods. Simulation results on synthetic and real point patterns with varying amount of noise, confirm that the algorithm is very effective.
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基于矩阵极性分解的ga仿射PPM
点模式匹配(PPM)在模式识别、数字视频处理和计算机视觉等领域都有应用。本文提出了一种基于遗传算法的仿射相关点集匹配方法。解决PPM问题的最常见技术包括确定两个集合中空间局部点之间的对应关系,然后使用一组方程找到适当的转换参数。本文利用了对应矩阵和变换矩阵是格律矩阵的两个酉极因子这一事实。我们通过遗传总体估计其中一个因素,然后通过使用另一个因素计算误差函数来评估这个估计。该方法是一种易于实现的方法,并且由于其中使用了遗传算法,其计算复杂度低于其他已知方法。对不同噪声量的合成点图和真实点图进行了仿真,验证了算法的有效性。
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