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Cloud Motion Measurement from Satellite Images using Iterative Multigrid Image Deformation Approach

机译:迭代多网格图像变形方法从卫星图像进行云运动测量

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The measurement of cloud motion is very useful in weather forecast and natural disaster management. This paper is focus on accurately estimating cloud motion from a sequences of satellite images. Due to the complexity of cloud motion, which is a non-rigid movement and implying non-linear events, we cannot adopt some simple motion models and need to develop new algorithms. We presented a new method for cloud motion measurement based on image matching. We use the Iterative Multigrid Image Deformation (IMID) technique to measure the cloud movement at sub pixel accuracy, and for the alignment of image sub-regions differing in translation, rotation angle, and uniform scale factor, we change the correlation method from discrete Cartesian cross correlations to the phase correlation based on the Fourier-Mellin Transformation (FMT) which is invariant to translation, rotation and scaling. The phase correlation based on FMT can directly estimate the rotation angle and scale factor between satellite images. For cloud regions with large rotation angle or scale factors, our method can get more accurate motion estimation than traditional correlations by searching the deformation parameters using Cartesian cross correlation. In addition, the iterative multigrid framework aims at improving the precision of motion measurement by refining the size of cloud regions. To validate the performance of our algorithm, we process a cloudy satellite image with known geometric transformation, including translation, rotation and scaling to simulate a sequence of satellite images, and apply our method to measure the velocity fields of clouds. We also apply our algorithm to the sequence of real satellite images. Our results show that IMID technique with FMT can significantly decrease the displacement error compared to traditional correlation methods, especially in regions with large velocity gradients or high rates of rotation.
机译:云运动的测量在天气预报和自然灾害管理中非常有用。本文的重点是从一系列卫星图像中准确估计云的运动。由于云运动的复杂性(这是非刚性运动并暗示了非线性事件),我们无法采用一些简单的运动模型,而需要开发新的算法。我们提出了一种基于图像匹配的云运动测量新方法。我们使用迭代多网格图像变形(IMID)技术来测量子像素精度下的云运动,对于平移,旋转角度和均匀比例因子不同的图像子区域的对齐,我们将相关方法从离散笛卡尔坐标更改为基于傅立叶-梅林变换(FMT)将互相关与相位相关进行互相关,该变换对平移,旋转和缩放不变。基于FMT的相位相关可以直接估计卫星图像之间的旋转角度和比例因子。对于具有大旋转角或比例因子的云区域,通过使用笛卡尔互相关来搜索变形参数,我们的方法可以获得比传统相关性更精确的运动估计。此外,迭代多网格框架旨在通过细化云区域的大小来提高运动测量的精度。为了验证算法的性能,我们使用已知的几何变换(包括平移,旋转和缩放)处理多云的卫星图像,以模拟一系列卫星图像,并将我们的方法应用于测量云的速度场。我们还将我们的算法应用于真实卫星图像的序列。我们的结果表明,与传统的相关方法相比,采用FMT的IMID技术可以显着降低位移误差,尤其是在速度梯度较大或旋转速率较高的区域。

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