A Template Matching Method for Multi-Scale and Rotated Images Using Ring Projection Vector Conversion

Xinwei Qi, Ligang Miao
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引用次数: 8

Abstract

Template matching is a process of finding template image location from a known image, which is one of the main research contents in machine vision. For the multi-scale and rotated image template matching, most of template matching algorithms usually form a templates collection with different scaling ratios templates, and then the templates in the collection are matched separately. The algorithm will greatly increase the calculation burden of template matching, and the matching efficiency will be greatly reduced. This paper proposes an algorithm for multi-scale and rotated image template matching. The algorithm first computes the ring projection vector of the template, and then, the ring projection of the scaled template can be obtained by ring projection vector conversion. The normalized cross correlation is used to calculate the similarity between the new ring projection vector and the ring projection vector of each point of the scene image. In the end the similarities determine the optimal matching position and scale ratio. Experimental results show that the proposed algorithm can accurately find the correct matching position for multi-scale and rotated image template matching.
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基于环投影矢量转换的多尺度旋转图像模板匹配方法
模板匹配是从已知图像中寻找模板图像位置的过程,是机器视觉的主要研究内容之一。对于多尺度旋转图像模板匹配,大多数模板匹配算法通常会形成一个具有不同比例模板的模板集合,然后对集合中的模板分别进行匹配。该算法将大大增加模板匹配的计算量,大大降低匹配效率。提出了一种多尺度旋转图像模板匹配算法。该算法首先计算模板的环投影向量,然后通过环投影向量转换得到缩放后模板的环投影。通过归一化互相关计算新的环投影向量与场景图像各点环投影向量之间的相似度。最后由相似度确定最优匹配位置和比例。实验结果表明,该算法能够准确地找到多尺度和旋转图像模板匹配的正确匹配位置。
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