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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Other Authors: Farahnakian, Fahimeh (Editor), Heikkonen, Jukka (Editor), Jafarzadeh, Pouya (Editor)
Format: Electronic Book Chapter
Language:English
Published: Basel MDPI - Multidisciplinary Digital Publishing Institute 2023
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DOAB: description of the publication
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520 |a 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. 
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650 7 |a Information technology industries  |2 bicssc 
650 7 |a Computer science  |2 bicssc 
653 |a pose estimation 
653 |a landmark regression 
653 |a space target 
653 |a 1D landmark representation 
653 |a deep learning 
653 |a convolutional neural network (CNN) 
653 |a deep supervision 
653 |a lightweight model 
653 |a remote sensing 
653 |a semantic segmentation 
653 |a convolutional neural networks (CNNs) 
653 |a remote sensing images 
653 |a object detection 
653 |a knowledge inference module 
653 |a convolutional neural networks 
653 |a tree ensemble methods 
653 |a multi-label classification 
653 |a complex-valued U-Net 
653 |a complex-valued capsule network 
653 |a polarimetric synthetic aperture radar 
653 |a unmanned aerial vehicle (UAV) 
653 |a grassland grazing livestock 
653 |a remote sensing image 
653 |a artificial intelligence 
653 |a building extraction 
653 |a multi-scale object detection 
653 |a multi-feature fusion and attention network 
653 |a multi-branch convolution 
653 |a attention mechanism 
653 |a loss function 
653 |a remote-sensing image 
653 |a neural architecture search 
653 |a sparse regularization 
653 |a HRNet 
653 |a Earth observation 
653 |a land use and land cover classification 
653 |a transfer learning 
653 |a dynamic resolution adaptation 
653 |a small-object detection 
653 |a machine learning 
653 |a data augmentation 
653 |a automatic target recognition 
653 |a synthetic aperture radar 
653 |a spacecraft recognition 
653 |a few-shot feature adaptation 
653 |a generative family 
653 |a neural processes 
653 |a remote sensing imagery 
653 |a transformer 
653 |a Landsat 
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