基于最小二乘图像匹配方法的最佳窗口大小实证研究

Dan Rosenholm
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引用次数: 12

摘要

研究了不同窗口大小的最小二乘匹配方法,以期找到最优的窗口大小。使用了一个包含三个不同成分的方差成分模型。研究了高空航空摄影对和近景摄影对。实验在有仿射参数和没有仿射参数的情况下进行。在使用的图像材料中,窗口尺寸小于20 × 20像素的可靠性太低。当仿射参数用作未知数时,出于可靠性考虑,窗口大小应大于30×30像素。
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Empirical investigation of optimal window size using the least squares image matching method

The least squares matching method with different window sizes has been investigated in order to find an optimal window size. A variance component model with three different components has been used. A high altitude aerial photographic pair and a close-range photographic pair have been investigated. The experiments have been performed with and without affine parameters as unknowns. In the image material used window sizes smaller than 20 × 20 pixels gave too low a reliablity. When affine parameters are used as unknowns the window size should be larger than 30×30 pixels, for reasons of reliability.

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