Analyzing hyper-spectral and multi-spectral data fusion in spectral domain

被引:0
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作者
H. Pande
Poonam S. Tiwari
Shashi Dobhal
机构
[1] Indian Institute of Remote Sensing (NRSC),
关键词
Image fusion; Gram-schmidt transform; Principal component transform; Colour normalised transform; Hyperspectral;
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学科分类号
摘要
Image fusion is the combination of two or more different images to form a new image by using a certain algorithm. Despite the fact that the number and kind of satellite imagery are daily increasing, using fusion techniques, in a proper way, to eliminate the redundancy in data and increase the quality of data is an important challenge in Remote Sensing Image Processing. Fusion of multispectral images with a hyperspectral image generates a composite image which preserves the spatial quality from the high resolution (MS) data and the spectral characteristics from the hyperspectral data. For the present study three fusion algorithms (Principal Component Transformation, Colour Normalized and Gram-Scmidt Transformation) were analysed for Hyperion and IKONOS MSS data. Their ability to preserve the spectral quality of fused data, in comparison with original hyper-spectral image, has been investigated.
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页码:395 / 408
页数:13
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