A Pansharpening Method Based on the Sparse Representation of Injected Details

Geoscience and Remote Sensing Letters, IEEE  (2015)

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摘要
The application of sparse representation (SR) theory to the fusion of multispectral (MS) and panchromatic images is giving a large impulse to this topic, which is recast as a signal reconstruction problem from a reduced number of measurements. This letter presents an effective implementation of this technique, in which the application of SR is limited to the estimation of missing details that are injected in the available MS image to enhance its spatial features. We propose an algorithm exploiting the details self-similarity through the scales and compare it with classical and recent pansharpening methods, both at reduced and full resolution. Two different data sets, acquired by the WorldView-2 and IKONOS sensors, are employed for validation, achieving remarkable results in terms of spectral and spatial quality of the fused product.
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关键词
image fusion,image processing,signal reconstruction,IKONOS sensor data set,MS image fusion,SR application,SR theory application,WorldView-2 sensor data set,available MS image injection,classical pansharpening method,full resolution,fused product spatial quality,fused product spectral quality,injected detail sparse representation,missing detail estimation,multispectral image fusion,panchromatic image fusion,reduced measurement number,reduced resolution,self-similarity detail,signal reconstruction problem recast,sparse representation theory application,spatial feature enhancement,technique implementation,Compressed sensing,data fusion,multispectral (MS) images,pansharpening,sparse representation (SR)
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