Pansharpening based on convolutional autoencoder and multi-scale guided filter

被引:0
作者
Ahmad AL Smadi
Shuyuan Yang
Zhang Kai
Atif Mehmood
Min Wang
Ala Alsanabani
机构
[1] School of Artificial Intelligence,
[2] Xidian University,undefined
[3] School of Information Science and Engineering,undefined
[4] Shandong Normal University,undefined
[5] Key Laboratory of Radar Signal Processing,undefined
[6] Xidian University,undefined
来源
EURASIP Journal on Image and Video Processing | / 2021卷
关键词
Pansharpening; Convolutional autoencoder; Guided image filtering; Adaptive intensity-hue-saturation AIHS;
D O I
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中图分类号
学科分类号
摘要
In this paper, we propose a pansharpening method based on a convolutional autoencoder. The convolutional autoencoder is a sort of convolutional neural network (CNN) and objective to scale down the input dimension and typify image features with high exactness. First, the autoencoder network is trained to reduce the difference between the degraded panchromatic image patches and reconstruction output original panchromatic image patches. The intensity component, which is developed by adaptive intensity-hue-saturation (AIHS), is then delivered into the trained convolutional autoencoder network to generate an enhanced intensity component of the multi-spectral image. The pansharpening is accomplished by improving the panchromatic image from the enhanced intensity component using a multi-scale guided filter; then, the semantic detail is injected into the upsampled multi-spectral image. Real and degraded datasets are utilized for the experiments, which exhibit that the proposed technique has the ability to preserve the high spatial details and high spectral characteristics simultaneously. Furthermore, experimental results demonstrated that the proposed study performs state-of-the-art results in terms of subjective and objective assessments on remote sensing data.
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