2020
DOI: 10.1109/access.2020.2973435
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Noisy Remote Sensing Image Fusion Based on JSR

Abstract: Compressed sensing has shown great potential and power in image representation, especially in image reconstruction by sparse representation. Due to complementary information and unavoidable noise existing in synthetic aperture radar (SAR) and other source images, joint sparse representation (JSR) is developed to separate redundancy and complementary information with different properties in source images and obtain a fused image, where image de-noising is done simultaneously owing to that noise is not sparse an… Show more

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Cited by 2 publications
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“…Finally, the final fused image was obtained by using guided filtering to reconstruct the SR-based fusion image and the SF-based fusion image [68]. In [69], a noisy remote sensing image fusion method based on joint sparse representation (JSR) was proposed to fuse SAR images with other source images. Firstly, the redundant complementary sub-images were obtained by the JSR method, and then the complementary sparse coefficients were fused together by using an improved fusion rule based on pulse coupled neural network (PCNN).…”
Section: Sparse Representation Methodsmentioning
confidence: 99%
“…Finally, the final fused image was obtained by using guided filtering to reconstruct the SR-based fusion image and the SF-based fusion image [68]. In [69], a noisy remote sensing image fusion method based on joint sparse representation (JSR) was proposed to fuse SAR images with other source images. Firstly, the redundant complementary sub-images were obtained by the JSR method, and then the complementary sparse coefficients were fused together by using an improved fusion rule based on pulse coupled neural network (PCNN).…”
Section: Sparse Representation Methodsmentioning
confidence: 99%