在选择图像配准像素时,比例的重要性

Rupert Brooks, T. Arbel
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引用次数: 4

摘要

直接的图像配准方法通过定义两幅图像之间差异的度量,并使用数值优化方法找到使差异最小化的变换来工作。经常有人提出,这些方法可以通过只使用一子集像素来计算差量来加快速度。以前的工作已经提出了一些基于图像导数的像素选择标准,但没有解决应用这些技术可能导致的性能下降问题。在本文中,我们表明,除非仔细应用,这些方法实际上并没有帮助。具体来说,如果初始起始位置距离最优点的距离大于导数的尺度,则配准算法的可靠性将会降低。此外,我们提出了新的基于信息理论的像素选择准则,计算速度更快。我们通过检查转换参数变化时的行为以及注册一些典型图像来验证两种流行的图像差异度量的这些命题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The importance of scale when selecting pixels for image registration
Direct methods of image registration work by defining a measure of the difference between two images and using numerical optimization methods to find the transformation that minimizes the difference. It has often been proposed that these methods may be speeded up by using only a sub- set of pixels to compute the difference measure. Previous work has suggested some criteria to use in pixel selection based on the derivative of the image, but has not addressed the issue of performance degradation that can result from applying these techniques. In this paper, we show that un- less applied carefully, these methods do not actually help. Specifically, reliability of the registration algorithm is lost if the initial starting position is further from the optimum than the scale of the derivative. Additionally, we propose new criteria for pixel selection which are strongly based on in- formation theory, and are faster to compute. We verify these propositions for two popular image difference measures by examining their behavior as the transformation parameters are varied, and by registering a number of typical images.
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