泛锐化:高斯差分的使用

Kishor P. Upla, M. Joshi, P. Gajjar
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引用次数: 4

摘要

本文提出了一种基于高斯差分的快速泛锐化方法。利用全色(Pan)和多光谱(MS)图像获得具有高光谱和空间分辨率的泛锐化图像。该方法基于Pan图像的二级DoG。首先,对Pan图像进行高斯核卷积得到模糊后的图像,将模糊后的图像与原始图像相减,提取高频细节作为第一级DoGs;为了得到第二级DoG,在模糊的Pan图像上重复相同的步骤。将提取的两条狗的细节加入到MS图像中,得到最终的泛锐化图像。利用Ikonos-2、Quickbird和worldview -2等不同卫星传感器采集的图像,采用不同的高斯模糊标准差值进行了实验。通过对一种相对较新的无参考质量度量(QNR)指标和其他传统度量进行评估,以检验所提算法的有效性。主观和定量评估表明,与最近提出的最先进的技术相比,所提出的技术性能更好、更快、更简单。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pan-sharpening: Use of difference of Gaussians
In this paper, we propose a fast method for pan-sharpening based on difference of Gaussians (DoGs). The Panchromatic (Pan) and the multi-spectral (MS) images are used to obtain a pan-sharpened image having both high spectral and spatial resolutions. The method is based on two level DoG on the Pan image. First, the Pan image is convolved with Gaussian kernel to obtain a blurred version and the high frequency details are extracted as the first level DoGs by subtracting the blurred image from the original. In order to get the second level DoG, same steps are repeated on the blurred Pan image. The extracted details at both DoGs are added to MS image to obtain the final pan-sharpened image. Experiments have been conducted with different values of standard deviation of Gaussian blur with images captured from different satellite sensors such as Ikonos-2, Quickbird and Worlview-2. A relatively new quality measure with no reference (QNR) index along with the other traditional measures are evaluated to check the efficacy of the proposed algorithm. The subjective and the quantitative assessment show that the proposed technique performs better, fast and less complex when compared to recently proposed state of the art techniques.
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