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An efficient fuzzy algorithm for aligning shapes under affine transformation

机译:仿射变换下形状对齐的有效模糊算法

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摘要

A fuzzy algorithm for aligning object shapes under affine transformations is proposed in this paper. The algorithm, with the name of fuzzy alignment algorithm (FAA), extends Marques' algorithm to affine transformations. It can efficiently estimate the point correspondence and tile relevant affine transformational parameters between the feature points of the object shape and the reference shape, In this algorithm, the fuzzy point-correspondence degrees are used to describe an uncertainty point assignment, then both the parameters of the affine transformation and the fuzzy correspondence degrees are iteratively calculated by minimizing a constrained fuzzy objective function. To prevent FAA from sinking into local minimum when the shapes are greatly deformed, an initialization method based on affine invariants is designed. Comparing to the eigenvector method, the effectiveness and robustness of the proposed algorithm is investigated with a sensitivity study based on randomly generated points. At last, good performance of FAA is illustrated with several experiments on aligning digits and object shapes. (C) 2001 Pattern Recognition Society. Published by Elsevier Science Ltd. all rights reserved. [References: 15]
机译:提出了一种仿射变换下对准物体形状的模糊算法。该算法以模糊对齐算法(FAA)为名称,将Marques的算法扩展到仿射变换。它可以有效地估计点的对应关系,并平铺对象形状和参考形状的特征点之间的相关仿射变换参数。在该算法中,模糊点对应度用于描述不确定性点分配,然后将两个参数通过最小化约束模糊目标函数来迭代计算仿射变换和模糊对应度。为防止形状严重变形时FAA陷入局部最小值,设计了一种基于仿射不变量的初始化方法。与特征向量法相比,该算法的有效性和鲁棒性是通过基于随机生成点的敏感性研究来进行的。最后,通过数个对齐数字和对象形状的实验说明了FAA的良好性能。 (C)2001模式识别学会。由Elsevier Science Ltd.保留所有权利。 [参考:15]

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