3260 papers • 126 benchmarks • 313 datasets
As a remote sensing image processing task, Pan-sharpening aims to increase the spatial resolution of the low-resolution multispectral image with the guidance of the corresponding panchromatic image.
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This paper proposes a full-resolution training framework for deep learning-based pansharpening, which is fully general and can be used for any deep learning -based pansHarpening model, and defines a suitable two-component loss to ensure spectral and spatial fidelity.
This paper designs a new detail injection based convolutional neural network (DiCNN) framework for pansharpening with the MS details being directly formulated in end-to-end manners, where the first detail injections based CNN mines MS details through the PAN image and the MS image, and the second one utilizes only the PAN picture.
A new self-supervised learning framework is proposed, where pansharpening is treated as a colorization problem, which brings an entirely novel perspective and solution to the problem compared with the existing methods that base their solution solely on producing a super-resolution version of the multispectral image.
A guided deep decoder network is proposed as a general prior that can achieve state-of-the-art performance in various image fusion problems and allows the network parameters to be optimized in an unsupervised way without training data.
A pyramid based deep fusion framework that preserves spectral and spatial characteristics at different scales and outperforms state of the art pansharpening models is proposed.
An index combining methodology has been developed, which enables the detection of plastic objects by exploiting spectra derived from the pan-sharpened hyperspectral images, and successfully detected the plastic targets and differentiated them from other materials.
This paper proposes a side information partially guided convolutional sparse coding (SCSC) model for pansharpening, generalized as a deep neural network, called as SCSC panshARPening neural network ( SCSC-PNN).
This article proposes a novel unsupervised DL-based S2 sharpening method using a single convolutional neural network (CNN) to sharpen the 20 and 60 m bands at the same time at full resolution.
A novel over-complete network, called HyperKite, which focuses on learning high-level features by constraining the receptive from increasing in the deep layers is proposed, which demonstrates the superiority of the DIP-HyperKite over the state-of-the-art pansharpening methods.
This work proposes an alternative no-reference full-resolution assessment framework, and introduces a protocol, namely the reprojection protocol, to take care of the spectral consistency issue and a new index of the spatial consistency between the pansharpened image and the panchromatic band at full resolution.
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