Abstract
Superresolution (SR) has provided an effective solution to the increasing need for high-resolution images in remote sensing applications. Among various SR methods, deep learning-based SR (DLSR) has made a significant breakthrough. However, supervised DLSR methods require a considerable amount of training data, which is hardly available in the remote sensing field. To address this issue, some research works have recently proposed and revealed the capability of deep learning in unsupervised SR. This article presents an efficient unsupervised SR (EUSR) deep learning model using dense skip connections, which boosts the reconstruction performance in parallel with the reduction of computational burden. To do this, several blocks containing densely connected convolutional layers are implemented to increase the depth of the model. Some skip connections also concatenate feature maps of different blocks to enable better SR performance. Moreover, a bottle-neck block abstracts the feature maps in fewer feature maps to remarkably reduce the computational burden. According to our experiments, the proposed EUSR leads to better results than the state-of-the-art DLSR method in terms of reconstruction quality with less computational burden. Furthermore, results indicate that the EUSR is more robust than its rival in dealing with images of different classes and larger sizes.
Highlights
A SIZABLE number of applications in remote sensing [1]– [3] need high-spatial resolution images (HSRIs)
According to the SR literature, deep learning-based SR (DLSR) methods initially proposed inspired by sparse representation based methods and led to significant improvement compared with their rivals [9], [10]
In order to evaluate the performance of the efficient unsupervised SR (EUSR), we selected the unsupervised generative SR (UGSR) as the most state-of-the-art unsupervised deep learningbased SR (DLSR) method in the remote sensing community
Summary
A SIZABLE number of applications in remote sensing [1]– [3] need high-spatial resolution images (HSRIs). According to the SR literature, deep learning-based SR (DLSR) methods initially proposed inspired by sparse representation based methods and led to significant improvement compared with their rivals [9], [10] These methods are generally categorized into two main supervised and unsupervised groups. It is essential to have in mind that the model has to be trained for input images in such unsupervised DLSR frameworks This fact highlights the need of these methods for having a model with less computational burden. SRDenseNet is a superior supervised SR architecture, which combines low- and high-level feature maps by skip connections for better image reconstruction These types of connections enable the model to achieve deeper status in parallel with optimization time reduction.
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More From: IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing
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