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Registration of multi-sensor remote sensing imagery by gradient-based optimization of cross-cumulative residual entropy

机译:通过基于梯度的交叉累积残差优化优化多传感器遥感影像配准

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摘要

For multi-sensor registration, previous techniques typically use mutual information (MI) rather than the sum-of-the-squared difference (SSD) as the similarity measure. However, the optimization of MI is much less straightforward than is the case for SSD-based algorithms. A new technique for image registration has recently been proposed that uses an information theoretic measure called the Cross-Cumulative Residual Entropy (CCRE). In this paper we show that using CCRE for multi-sensor registration of remote sensing imagery provides an optimization strategy that converges to a global maximum with significantly less iterations than existing techniques and is much less sensitive to the initial geometric disparity between the two images to be registered.
机译:对于多传感器配准,以前的技术通常使用互信息(MI)而不是平方和之差(SSD)作为相似性度量。但是,与基于SSD的算法相比,MI的优化要简单得多。最近已经提出了一种新的图像配准技术,该技术使用了一种称为交叉累积残差熵(CCRE)的信息理论量度。在本文中,我们表明,使用CCRE进行遥感影像的多传感器配准可提供一种优化策略,该算法收敛到全局最大值,且迭代次数比现有技术少得多,并且对两个图像之间的初始几何差异的敏感度要低得多。注册。

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