Deep Learning and Computer Vision in Remote Sensing-II

Computer Vision (CV) have seen a massive rise in popularity in the remote sensing field over the last few years. This success is mostly due to the effectiveness of deep learning (DL) algorithms. However, remote sensing data acquisition and annotation, as well as information extraction from massive r...

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Udgivet: MDPI - Multidisciplinary Digital Publishing Institute 2023
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collection Directory of Open Access Books
description Computer Vision (CV) have seen a massive rise in popularity in the remote sensing field over the last few years. This success is mostly due to the effectiveness of deep learning (DL) algorithms. However, remote sensing data acquisition and annotation, as well as information extraction from massive remote sensing data, are still challenging. This reprint collected novel developments in the field of deep learning and computer vision methods for remote sensing. Papers dealing with fundamental theoretical analyses, as well as those demonstrating their application to real-world problems, have been published. With practical examples and real-world case studies, this reprint provides a valuable resource for researchers, professionals, and students seeking to harness the power of deep learning in the field of remote sensing. Here are some major topics that are addressed in this reprint: Satellite image processing and analysis based on deep learning; Deep learning for object detection, image classification, and semantic and instance segmentation; Deep learning for remote sensing scene understanding and classification; Transfer learning, deep reinforcement learning for remote sensing; Supervised and unsupervised representation learning for remote sensing environments.
format Online
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institution Directory of Open Access Books
language eng
publishDate 2023
publishDateRange 2023
publishDateSort 2023
publisher MDPI - Multidisciplinary Digital Publishing Institute
publisherStr MDPI - Multidisciplinary Digital Publishing Institute
record_format ojs
spelling doab-20.500.12854ir-1287892024-03-30T12:51:25Z Deep Learning and Computer Vision in Remote Sensing-II Farahnakian, Fahimeh Heikkonen, Jukka Jafarzadeh, Pouya pose estimation landmark regression space target 1D landmark representation deep learning convolutional neural network (CNN) deep supervision lightweight model remote sensing semantic segmentation convolutional neural networks (CNNs) remote sensing images object detection knowledge inference module convolutional neural networks tree ensemble methods multi-label classification complex-valued U-Net complex-valued capsule network polarimetric synthetic aperture radar unmanned aerial vehicle (UAV) grassland grazing livestock remote sensing image artificial intelligence building extraction multi-scale object detection multi-feature fusion and attention network multi-branch convolution attention mechanism loss function remote-sensing image neural architecture search sparse regularization HRNet Earth observation land use and land cover classification transfer learning dynamic resolution adaptation small-object detection machine learning data augmentation automatic target recognition synthetic aperture radar spacecraft recognition few-shot feature adaptation generative family neural processes remote sensing imagery transformer Landsat thema EDItEUR::K Economics, Finance, Business and Management::KN Industry and industrial studies::KNT Media, entertainment, information and communication industries::KNTX Information technology industries thema EDItEUR::U Computing and Information Technology::UY Computer science Computer Vision (CV) have seen a massive rise in popularity in the remote sensing field over the last few years. This success is mostly due to the effectiveness of deep learning (DL) algorithms. However, remote sensing data acquisition and annotation, as well as information extraction from massive remote sensing data, are still challenging. This reprint collected novel developments in the field of deep learning and computer vision methods for remote sensing. Papers dealing with fundamental theoretical analyses, as well as those demonstrating their application to real-world problems, have been published. With practical examples and real-world case studies, this reprint provides a valuable resource for researchers, professionals, and students seeking to harness the power of deep learning in the field of remote sensing. Here are some major topics that are addressed in this reprint: Satellite image processing and analysis based on deep learning; Deep learning for object detection, image classification, and semantic and instance segmentation; Deep learning for remote sensing scene understanding and classification; Transfer learning, deep reinforcement learning for remote sensing; Supervised and unsupervised representation learning for remote sensing environments. 2023-11-30T20:52:50Z 2023-11-30T20:52:50Z 2023 book ONIX_20231130_9783036593647_241 9783036593647 9783036593654 https://directory.doabooks.org/handle/20.500.12854/128789 eng application/octet-stream Attribution 4.0 International https://mdpi.com/books/pdfview/book/8255 https://mdpi.com/books/pdfview/book/8255 MDPI - Multidisciplinary Digital Publishing Institute 10.3390/books978-3-0365-9365-4 10.3390/books978-3-0365-9365-4 46cabcaa-dd94-4bfe-87b4-55023c1b36d0 9783036593647 9783036593654 378 Basel open access
spellingShingle pose estimation
landmark regression
space target
1D landmark representation
deep learning
convolutional neural network (CNN)
deep supervision
lightweight model
remote sensing
semantic segmentation
convolutional neural networks (CNNs)
remote sensing images
object detection
knowledge inference module
convolutional neural networks
tree ensemble methods
multi-label classification
complex-valued U-Net
complex-valued capsule network
polarimetric synthetic aperture radar
unmanned aerial vehicle (UAV)
grassland grazing livestock
remote sensing image
artificial intelligence
building extraction
multi-scale object detection
multi-feature fusion and attention network
multi-branch convolution
attention mechanism
loss function
remote-sensing image
neural architecture search
sparse regularization
HRNet
Earth observation
land use and land cover classification
transfer learning
dynamic resolution adaptation
small-object detection
machine learning
data augmentation
automatic target recognition
synthetic aperture radar
spacecraft recognition
few-shot feature adaptation
generative family
neural processes
remote sensing imagery
transformer
Landsat
thema EDItEUR::K Economics, Finance, Business and Management::KN Industry and industrial studies::KNT Media, entertainment, information and communication industries::KNTX Information technology industries
thema EDItEUR::U Computing and Information Technology::UY Computer science
Deep Learning and Computer Vision in Remote Sensing-II
title Deep Learning and Computer Vision in Remote Sensing-II
title_full Deep Learning and Computer Vision in Remote Sensing-II
title_fullStr Deep Learning and Computer Vision in Remote Sensing-II
title_full_unstemmed Deep Learning and Computer Vision in Remote Sensing-II
title_short Deep Learning and Computer Vision in Remote Sensing-II
title_sort deep learning and computer vision in remote sensing ii
topic pose estimation
landmark regression
space target
1D landmark representation
deep learning
convolutional neural network (CNN)
deep supervision
lightweight model
remote sensing
semantic segmentation
convolutional neural networks (CNNs)
remote sensing images
object detection
knowledge inference module
convolutional neural networks
tree ensemble methods
multi-label classification
complex-valued U-Net
complex-valued capsule network
polarimetric synthetic aperture radar
unmanned aerial vehicle (UAV)
grassland grazing livestock
remote sensing image
artificial intelligence
building extraction
multi-scale object detection
multi-feature fusion and attention network
multi-branch convolution
attention mechanism
loss function
remote-sensing image
neural architecture search
sparse regularization
HRNet
Earth observation
land use and land cover classification
transfer learning
dynamic resolution adaptation
small-object detection
machine learning
data augmentation
automatic target recognition
synthetic aperture radar
spacecraft recognition
few-shot feature adaptation
generative family
neural processes
remote sensing imagery
transformer
Landsat
thema EDItEUR::K Economics, Finance, Business and Management::KN Industry and industrial studies::KNT Media, entertainment, information and communication industries::KNTX Information technology industries
thema EDItEUR::U Computing and Information Technology::UY Computer science
topic_facet pose estimation
landmark regression
space target
1D landmark representation
deep learning
convolutional neural network (CNN)
deep supervision
lightweight model
remote sensing
semantic segmentation
convolutional neural networks (CNNs)
remote sensing images
object detection
knowledge inference module
convolutional neural networks
tree ensemble methods
multi-label classification
complex-valued U-Net
complex-valued capsule network
polarimetric synthetic aperture radar
unmanned aerial vehicle (UAV)
grassland grazing livestock
remote sensing image
artificial intelligence
building extraction
multi-scale object detection
multi-feature fusion and attention network
multi-branch convolution
attention mechanism
loss function
remote-sensing image
neural architecture search
sparse regularization
HRNet
Earth observation
land use and land cover classification
transfer learning
dynamic resolution adaptation
small-object detection
machine learning
data augmentation
automatic target recognition
synthetic aperture radar
spacecraft recognition
few-shot feature adaptation
generative family
neural processes
remote sensing imagery
transformer
Landsat
thema EDItEUR::K Economics, Finance, Business and Management::KN Industry and industrial studies::KNT Media, entertainment, information and communication industries::KNTX Information technology industries
thema EDItEUR::U Computing and Information Technology::UY Computer science
url ONIX_20231130_9783036593647_241