Image template matching using Mutual Information and NP-Windows

N. Dowson, R. Bowden, T. Kadir
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引用次数: 15

Abstract

A non-parametric (NP) sampling method is introduced for obtaining the joint distribution of a pair of images. This method based on NP windowing and is equivalent to sampling the images at infinite resolution. Unlike existing methods, arbitrary selection of kernels is not required and the spatial structure of images is used. NP windowing is applied to a registration application where the mutual information (MI) between a reference image and a warped template is maximised with respect to the warp parameters. In comparisons against the current state of the art MI registration methods NP windowing yielded excellent results with lower bias and improved convergence rates
基于互信息和NP-Windows的图像模板匹配
介绍了一种非参数(NP)采样方法,用于获取一对图像的联合分布。该方法基于NP窗,相当于对无限分辨率的图像进行采样。与现有方法不同,该方法不需要任意选择核,而是利用图像的空间结构。NP窗口应用于配准应用,其中参考图像和翘曲模板之间的互信息(MI)相对于翘曲参数最大化。在与当前最先进的MI配准方法的比较中,NP窗口产生了极好的结果,具有较低的偏差和提高的收敛率
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