Unsupervised Deep Learning-based Pansharpening with Jointly-Enhanced
Spectral and Spatial Fidelity
- URL: http://arxiv.org/abs/2307.14403v1
- Date: Wed, 26 Jul 2023 17:25:28 GMT
- Title: Unsupervised Deep Learning-based Pansharpening with Jointly-Enhanced
Spectral and Spatial Fidelity
- Authors: Matteo Ciotola, Giovanni Poggi, Giuseppe Scarpa
- Abstract summary: We propose a new deep learning-based pansharpening model that fully exploits the potential of this approach.
The proposed model features a novel loss function that jointly promotes the spectral and spatial quality of the pansharpened data.
Experiments on a large variety of test images, performed in challenging scenarios, demonstrate that the proposed method compares favorably with the state of the art.
- Score: 4.425982186154401
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: In latest years, deep learning has gained a leading role in the pansharpening
of multiresolution images. Given the lack of ground truth data, most deep
learning-based methods carry out supervised training in a reduced-resolution
domain. However, models trained on downsized images tend to perform poorly on
high-resolution target images. For this reason, several research groups are now
turning to unsupervised training in the full-resolution domain, through the
definition of appropriate loss functions and training paradigms. In this
context, we have recently proposed a full-resolution training framework which
can be applied to many existing architectures.
Here, we propose a new deep learning-based pansharpening model that fully
exploits the potential of this approach and provides cutting-edge performance.
Besides architectural improvements with respect to previous work, such as the
use of residual attention modules, the proposed model features a novel loss
function that jointly promotes the spectral and spatial quality of the
pansharpened data. In addition, thanks to a new fine-tuning strategy, it
improves inference-time adaptation to target images. Experiments on a large
variety of test images, performed in challenging scenarios, demonstrate that
the proposed method compares favorably with the state of the art both in terms
of numerical results and visual output. Code is available online at
https://github.com/matciotola/Lambda-PNN.
Related papers
- Research on Image Super-Resolution Reconstruction Mechanism based on Convolutional Neural Network [8.739451985459638]
Super-resolution algorithms transform one or more sets of low-resolution images captured from the same scene into high-resolution images.
The extraction of image features and nonlinear mapping methods in the reconstruction process remain challenging for existing algorithms.
The objective is to recover high-quality, high-resolution images from low-resolution images.
arXiv Detail & Related papers (2024-07-18T06:50:39Z) - One-Shot Image Restoration [0.0]
Experimental results demonstrate the applicability, robustness and computational efficiency of the proposed approach for supervised image deblurring and super-resolution.
Our results showcase significant improvement of learning models' sample efficiency, generalization and time complexity.
arXiv Detail & Related papers (2024-04-26T14:03:23Z) - FouriScale: A Frequency Perspective on Training-Free High-Resolution Image Synthesis [48.9652334528436]
We introduce an innovative, training-free approach FouriScale from the perspective of frequency domain analysis.
We replace the original convolutional layers in pre-trained diffusion models by incorporating a dilation technique along with a low-pass operation.
Our method successfully balances the structural integrity and fidelity of generated images, achieving an astonishing capacity of arbitrary-size, high-resolution, and high-quality generation.
arXiv Detail & Related papers (2024-03-19T17:59:33Z) - Band-wise Hyperspectral Image Pansharpening using CNN Model Propagation [4.246657212475299]
We propose a new deep learning method for hyperspectral pansharpening.
It inherits a simple single-band unsupervised pansharpening model nested in a sequential band-wise adaptive scheme.
The proposed method achieves very good results on our datasets, outperforming both traditional and deep learning reference methods.
arXiv Detail & Related papers (2023-11-11T08:53:54Z) - Proximal PanNet: A Model-Based Deep Network for Pansharpening [11.695233311615498]
We propose a novel deep network for pansharpening by combining the model-based methodology with the deep learning method.
We unfold the iterative algorithm into a deep network, dubbed as Proximal PanNet, by learning the proximal operators using convolutional neural networks.
Experimental results on some benchmark datasets show that our network performs better than other advanced methods both quantitatively and qualitatively.
arXiv Detail & Related papers (2022-02-12T15:49:13Z) - Image-specific Convolutional Kernel Modulation for Single Image
Super-resolution [85.09413241502209]
In this issue, we propose a novel image-specific convolutional modulation kernel (IKM)
We exploit the global contextual information of image or feature to generate an attention weight for adaptively modulating the convolutional kernels.
Experiments on single image super-resolution show that the proposed methods achieve superior performances over state-of-the-art methods.
arXiv Detail & Related papers (2021-11-16T11:05:10Z) - Deep Reparametrization of Multi-Frame Super-Resolution and Denoising [167.42453826365434]
We propose a deep reparametrization of the maximum a posteriori formulation commonly employed in multi-frame image restoration tasks.
Our approach is derived by introducing a learned error metric and a latent representation of the target image.
We validate our approach through comprehensive experiments on burst denoising and burst super-resolution datasets.
arXiv Detail & Related papers (2021-08-18T17:57:02Z) - Image Restoration by Deep Projected GSURE [115.57142046076164]
Ill-posed inverse problems appear in many image processing applications, such as deblurring and super-resolution.
We propose a new image restoration framework that is based on minimizing a loss function that includes a "projected-version" of the Generalized SteinUnbiased Risk Estimator (GSURE) and parameterization of the latent image by a CNN.
arXiv Detail & Related papers (2021-02-04T08:52:46Z) - Learning Deformable Image Registration from Optimization: Perspective,
Modules, Bilevel Training and Beyond [62.730497582218284]
We develop a new deep learning based framework to optimize a diffeomorphic model via multi-scale propagation.
We conduct two groups of image registration experiments on 3D volume datasets including image-to-atlas registration on brain MRI data and image-to-image registration on liver CT data.
arXiv Detail & Related papers (2020-04-30T03:23:45Z) - BP-DIP: A Backprojection based Deep Image Prior [49.375539602228415]
We propose two image restoration approaches: (i) Deep Image Prior (DIP), which trains a convolutional neural network (CNN) from scratch in test time using the degraded image; and (ii) a backprojection (BP) fidelity term, which is an alternative to the standard least squares loss that is usually used in previous DIP works.
We demonstrate the performance of the proposed method, termed BP-DIP, on the deblurring task and show its advantages over the plain DIP, with both higher PSNR values and better inference run-time.
arXiv Detail & Related papers (2020-03-11T17:09:12Z) - Multimodal Deep Unfolding for Guided Image Super-Resolution [23.48305854574444]
Deep learning methods rely on training data to learn an end-to-end mapping from a low-resolution input to a high-resolution output.
We propose a multimodal deep learning design that incorporates sparse priors and allows the effective integration of information from another image modality into the network architecture.
Our solution relies on a novel deep unfolding operator, performing steps similar to an iterative algorithm for convolutional sparse coding with side information.
arXiv Detail & Related papers (2020-01-21T14:41:53Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.