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A Comparative Investigation of Image Fusion in the Context of Classification

机译:分类背景下图像融合的比较研究

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Image fusion assists in visual interpretation, mapping, change detection and many other applications. Multispectral and Panchromatic images are fused to produce images having enhanced spatial and spectral properties. These properties are generally distorted from original images. The aim of this paper is to identify the effectiveness of the several fusion techniques based on the distortions and applications. This paper employs seven image fusion techniques namely, Brovey transform, intensity hue saturation, high pass filter, principle component analysis, UNB Pansharpening, wavelet transform and multiplicative, available in various commercial image processing software. The data for this study are panchromatic image of Cartosat-1 and multispectral image of IRS - P6 LISS 4 sensor of study area, Bhopal Municipal Corporation area, M.P. State, India. The effectiveness of image fusion techniques is determined by quantitative and qualitative assessments. Quantitative assessment is divided into two parts: 1) assessment of fusion techniques by statistical parameters and 2) accuracy assessment of land use maps generated from the fused images. For part 1, three parameters namely, mean bias, correlation coefficient and Q4 quality index, have been used. Based on the results of part 1, UNB Pansharpening and wavelet transform are the best among seven fusion techniques. For part 2, Gaussian and Artificial Neural Network classifiers have been used to generate land cover maps. However, the accuracy results are inconclusive to identify a single best method. Nevertheless, image fusion by wavelet transform has provided best results in both the sector. Hence, wavelet transform is concluded as the best among selected fusion techniques.
机译:图像融合有助于视觉解释,映射,更改检测和许多其他应用。将多光谱和全色图像融合以产生具有增强的空间和光谱特性的图像。这些属性通常会与原始图像失真。本文的目的是基于失真和应用来确定几种融合技术的有效性。本文采用了7种图像融合技术,分别是Brovey变换,强度色调饱和度,高通滤波器,主成分分析,UNB Pansharpening,小波变换和乘法,可在各种商业图像处理软件中使用。这项研究的数据是Bhopal Municipal Corporation地区M.P.的Cartosat-1的全色图像和IRS-P6 LISS 4传感器的多光谱图像。印度国家。图像融合技术的有效性取决于定量和定性评估。定量评估分为两个部分:1)通过统计参数评估融合技术,以及2)从融合图像生成的土地利用图的准确性评估。对于第1部分,使用了三个参数,即平均偏差,相关系数和Q4质量指标。根据第1部分的结果,UNB Pansharpening和小波变换是7种融合技术中最好的。对于第2部分,高斯和人工神经网络分类器已用于生成土地覆盖图。但是,准确性结果尚不能确定一个最佳方法。然而,通过小波变换的图像融合在这两个领域都提供了最好的结果。因此,小波变换被认为是所选融合技术中最好的。

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