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ZNCC-based template matching using bounded partial correlation

机译:使用有界偏相关的基于ZNCC的模板匹配

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摘要

This paper describes a class of algorithms enabling efficient and exhaustive matching of a template into an image based on the Zero mean Normalized Cross-Correlation function (ZNCC). The approach consists in checking at each image position two sufficient conditions obtained at a reduced computational cost. This allows to skip rapidly most of the expensive calculations required to evaluate the ZNCC at those image points that cannot improve the best correlation score found so far. The algorithms shown in this paper generalize and extend the concept of Bounded Partial Correlation (BPC), previously devised for a template matching process based on the Normalized Cross-Correlation function (NCC).
机译:本文介绍了一类算法,可基于零均值归一化互相关函数(ZNCC)将模板有效且详尽地匹配到图像中。该方法包括在每个图像位置检查以降低的计算成本获得的两个充分条件。这样就可以快速跳过在迄今无法改善最佳相关评分的那些图像点上评估ZNCC所需的大多数昂贵计算。本文显示的算法概括并扩展了有界部分相关(BPC)的概念,该概念以前是为基于归一化互相关函数(NCC)的模板匹配过程而设计的。

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