遥感应用中几种基本插值方法的研究

Kian Kee Teoh, Haidi Ibrahim, S. Bejo
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引用次数: 26

摘要

卫星图像是遥感数据的一个例子。但是,当可用卫星图像的分辨率过于粗糙,不能满足要求的分辨率时,需要采用图像重采样的过程,从而获得更高分辨率的图像版本。图像重采样可能涉及插值,这是一个将强度值分配到新生成的像素的过程。然而,插值方法通常会降低图像质量。本文成功地实现了五种基本的插值方法。这些插值方法包括最近邻插值、双线性插值、平滑滤波插值、锐化滤波插值和非锐化掩模插值。本课题的目的是寻找适合于遥感数据的插值方法。我们感兴趣的方法是一种易于实现,但在信息的清晰度和有效性方面可以保持数据质量的方法。结果表明,在输入图像分辨率较高的情况下,本文所测试的五种插值方法均能产生较好的输出质量。对于低分辨率输入,只有双线性平滑滤波和非锐化掩模才能保持图像质量。然而,这仅限于放大系数小于5的插补。在输入图像分辨率足够高的情况下,双线性、平滑滤波和非锐化掩模适合插值遥感数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Investigation on several basic interpolation methods for the use in remote sensing application
Image from satellite is an example of remote sensing data. However, when the resolution of the available satellite image is too coarse and does not meet the required resolution, a process known as image re-sampling need to be employed, so a higher resolution version of the image could be obtained. Image re-sampling may involve interpolation, which is a process of allocating intensity value into a new generated pixel. Yet, interpolation method usually degrades the image quality. In this paper, five basic interpolation methods have been successfully implemented. These interpolation methods are nearest neighbor interpolation, bilinear interpolation, interpolation with smoothing filter, interpolation with sharpening filter, and interpolation with unsharp masking. The aim of this project is to find interpolation method that is suitable for remote sensing data. The method of our interest is the method that is easy to be implemented, but can preserve the quality of the data in term of sharpness and validness of the information. Based on the results, it is shown that all five interpolation methods tested in this research can produce good quality output when the resolution of input image is high. For low resolution input, only bilinear, smoothing filter and unsharp masking can preserve the quality of the image. However, this is only limited for interpolation with magnification factor less than 5. Bilinear, smoothing filter and unsharp masking are suitable to interpolate remote sensing data if the resolution of the input image is high enough.
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