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An Improved Mutual Information Similarity Measure for Registration of Multi-Modal Remote Sensing Images

机译:改进的互信息相似度度量用于多模态遥感影像配准

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Registration of multi-modal remote sensing images is an essential and challenging task in different remote sensing applications such as image fusion and multi-temporal change detection. Mutual Information (MI) has shown to be successful similarity measure for multi-modal image registration applications, however it has some drawbacks. 1. MI surface is highly non-convex with many local maxima. 2. Spatial information is completely lost in the calculation of the joint intensity probability distribution. In this paper, we present an improved MI similarity measure based on a new concept in integrating other image features as well as spatial information in the estimation of the joint intensity histogram which is used as an estimate of the joint probability distribution. The proposed method is based on the idea that each pixel in the reference image is assigned a weight, then each bin in the joint histogram is calculated as the summations of the weights of the pixels corresponding to that bin. The weight given to each pixel in the reference image is an exponential function of the corresponding pixel values in a distance image and a normalized gradient image such that higher weights are given to points close to one or more selected key points as well as points with high normalized gradient values. The proposed method is in essence a kind of calculating similarity measure using irregular sampling where sampling frequency is higher in areas close to key-points or areas with higher gradients. We have compared the proposed method with the conventional MI and Normalized MI methods for registration of pairs of multi-temporal multi-modal remote sensing images. We observed that the proposed method produces considerably better registration function containing fewer erroneous maxima and leading to higher success rate.
机译:在诸如图像融合和多时间变化检测之类的不同遥感应用中,多模式遥感影像的配准是一项必不可少且具有挑战性的任务。互信息(MI)已被证明是用于多模式图像配准应用程序的成功相似度度量,但是它具有一些缺点。 1. MI表面高度不凸,具有许多局部最大值。 2.在计算联合强度概率分布时,空间信息完全丢失。在本文中,我们提出了一种基于新概念的改进的MI相似性度量,该新概念在将其他图像特征以及空间信息整合到联合强度直方图的估算中用作联合概率分布的估算。所提出的方法基于以下思想:为参考图像中的每个像素分配一个权重,然后将联合直方图中的每个bin计算为与该bin对应的像素的权重之和。给参考图像中每个像素的权重是距离图像和归一化梯度图像中相应像素值的指数函数,以便对靠近一个或多个选定关键点的点以及具有高点的点赋予较高的权重归一化梯度值。所提出的方法本质上是一种使用不规则采样来计算相似性度量的方法,其中在关键点附近或具有较高梯度的区域中采样频率较高。我们已经将所提出的方法与传统的MI和规范化的MI方法进行了比较,以记录多对多时间多模式遥感影像。我们观察到,所提出的方法产生了更好的配准函数,包含更少的错误最大值并导致更高的成功率。

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