一种基于归一化互相关的穷举模板匹配算法

L. D. Stefano, S. Mattoccia, M. Mola
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引用次数: 79

摘要

本文提出了一种基于归一化互相关(NCC)的新技术,旨在提高穷举模板匹配的性能。利用NCC函数的上界,可以获得一个有效的充分条件,能够快速修剪那些相对于当前最佳候选者不能提供更好的交叉相关分数的匹配候选者。这个上界依赖于相互关系的部分求值,可以有效地计算,与NCC函数相比,大大减少了操作,并允许减少执行穷举搜索所需的操作总数。然而,有界偏相关(BPC)算法具有明显的数据依赖性。在本文中,我们提出了一种新的算法,该算法通过部署更具选择性的充分条件来提高BPC的整体性能,从而使算法显着减少对数据的依赖。给出了真实图像和实际CPU时间下的实验结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An efficient algorithm for exhaustive template matching based on normalized cross correlation
This work proposes a novel technique aimed at improving the performance of exhaustive template matching based on the normalized cross correlation (NCC). An effective sufficient condition, capable of rapidly pruning those match candidates that could not provide a better cross correlation score with respect to the current best candidate, can be obtained exploiting an upper bound of the NCC function. This upper bound relies on partial evaluation of the crosscorrelation and can be computed efficiently, yielding a significant reduction of operations compared to the NCC function and allows for reducing the overall number of operations required to carry out exhaustive searches. However, the bounded partial correlation (BPC) algorithm turns out to be significantly data dependent. In this paper we propose a novel algorithm that improves the overall performance of BPC thanks to the deployment of a more selective sufficient condition which allows for rendering the algorithm significantly less data dependent. Experimental results with real images and actual CPU time are reported.
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