基于高斯滤波对数极变换和相位相关的旋转不变特征匹配

A. Hast, Andrea Marchetti
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引用次数: 16

摘要

旋转不变性是任何特征匹配方法的一个重要属性,不同的方法有不同的实现方式。对数极变换主要用于图像配准,在相位相关之后应用,相位相关又应用于整个图像,或者在模板匹配的情况下,应用于图像的主要部分,然后进行穷举搜索。我们研究了如何在特征的局部邻域上使用这种变换,以及如何在结果上应用相位相关和归一化互相关。因此,顺序颠倒了,我们争论为什么这样做很重要。我们展示了对数极坐标变换的一个常见问题,它的许多实现不适合局部特征检测器。我们提出了一种基于高斯滤波的实现方法。我们还表明,相位相关通常比归一化互相关表现得更好。两者都能很好地处理光照差异,但相位相关方法能更好地处理尺度变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rotation invariant feature matching-based on Gaussian filtered log polar transform and phase correlation
Rotation invariance is an important property for any feature matching method and it has been implemented in different ways for different methods. The Log Polar Transform has primarily been used for image registration where it is applied after phase correlation, which in its turn is applied on the whole images or in the case of template matching, applied on major parts of them followed by an exhaustive search. We investigate how this transform can be used on local neighborhoods of features and how phase correlation as well as normalized cross correlation can be applied on the result. Thus, the order is reversed and we argue why it is important to do so. We demonstrate a common problem with the log polar transform and that many implementations of it are not suitable for local feature detectors. We propose an implementation of it based on Gaussian filtering. We also show that phase correlation generally will perform better than normalized cross correlation. Both handles illumination differences well, but changes in scale is handled better by the phase correlation approach.
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