Cloud Motion Estimation in Satellite Image Sequences by Tracking Skeleton Critical Points Using Lucas-Kanade Method

Hassan Id Ben Idder, Nabil Laachfoubi
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引用次数: 4

Abstract

In this work we propose a new approach to estimate motion of clouds from satellite images using tools from digital geometry in combination with tools from computer vision field. The idea is to represent clouds by their binary skeleton and then to track the critical points of the pruned skeleton using optical flow estimation approach, particularly using the Lucas-Kanade method which generates a sparse motion field of a set of feature points. The critical points of the skeleton can easily tell which pixel is suitable to be tracked by the optical flow algorithm. Our method is motivated by the fact that critical points of a binary skeleton can carry information about the global structure of an object. In the specific context of meteorological imagery, the information about clouds shape and their topology is embedded in the critical points of the skeleton which makes them more suitable for determining the good features to track by an optical flow algorithm.
基于Lucas-Kanade方法的卫星图像序列骨架临界点云运动估计
在这项工作中,我们提出了一种新的方法,利用数字几何工具和计算机视觉工具相结合,从卫星图像中估计云的运动。其思想是通过云的二值骨架来表示云,然后使用光流估计方法跟踪修剪后的骨架的临界点,特别是使用Lucas-Kanade方法,该方法生成一组特征点的稀疏运动场。骨架的关键点可以很容易地判断出哪个像素适合光流算法进行跟踪。我们的方法的动机是二进制骨架的关键点可以携带关于一个对象的整体结构的信息。在特定的气象图像环境中,云的形状和拓扑信息被嵌入到骨架的关键点中,使得它们更适合于光流算法确定需要跟踪的良好特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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