2021
DOI: 10.1049/ipr2.12136
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A plexus‐convolutional neural network framework for fast remote sensing image super‐resolution in wavelet domain

Abstract: Satellite image processing has been widely used in recent years in a number of applications such as land classification, Identification transfer, resource exploration, super-resolution image, etc. Due to the orbital location, revision time, quick view angle limitations, and weather impact, the satellite images are challenging to manage. There are many types of resolution, such as spatial, spectral, and temporal. Still, in our case, we concentrated on spatial image resolution to super resolve the images from lo… Show more

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Cited by 9 publications
(6 citation statements)
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References 50 publications
(107 reference statements)
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“…The inverse convolutional network part adopts the mirror structure of convolutional network, which aims at reconstructing the shape of the input target, so the multilevel inverse convolutional structure is also able to capture the shape details of different levels of the land-covered remote sensing images like convolutional network. In the convolutional network, the low-level features can describe the whole target rough information, such as target location, general shape, etc., while the more complex high-level features have classification characteristics and contain more target details 19 .…”
Section: Semantic Classification Of Land Cover Remote Sensing Imagesmentioning
confidence: 99%
“…The inverse convolutional network part adopts the mirror structure of convolutional network, which aims at reconstructing the shape of the input target, so the multilevel inverse convolutional structure is also able to capture the shape details of different levels of the land-covered remote sensing images like convolutional network. In the convolutional network, the low-level features can describe the whole target rough information, such as target location, general shape, etc., while the more complex high-level features have classification characteristics and contain more target details 19 .…”
Section: Semantic Classification Of Land Cover Remote Sensing Imagesmentioning
confidence: 99%
“…A deep learning [21]system called ConvNet, also referred to as the Convolutional Neural Network (CNN), uses input data and applies biases and weights to various components. The input is then divided into its numerous components, as seen in Algorithm 1.…”
Section: Classification Model: 51 Convolution Neural Networkmentioning
confidence: 99%
“…During training, 16 degraded patches of size 48*48 are used for a batch input. For arbitrary-scale upsampling in the EDBNet, the authors sample random scale factors in uniform distribution U (1,4). Each instance in a batch has different upscale target.…”
Section: Related Workmentioning
confidence: 99%
“…Introduction: Image super-resolution, as a classic image processing technique, aims to produce a high-resolution (HR) image based on a degraded low-resolution (LR) image. In recent years, single image superresolution (SISR) methods with deep convolutional neural networks (CNNs) [1][2][3][4][5] have been significantly developed over traditional superresolution (SR) methods and extensively applied in various fields, such as medical images [6,7] and satellite imaging [8]. However, most existing SISR pre-trained models can only perform single image restoration of the LR image which increase computational costs.…”
mentioning
confidence: 99%