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Deep Learning and Computer Vision in Remote Sensing

Farahnakian, Fahimeh ; Heikkonen, Jukka ; et al.
Basel: MDPI - Multidisciplinary Digital Publishing Institute, 2023
Online E-Book - 572

Titel:
Deep Learning and Computer Vision in Remote Sensing
Autor/in / Beteiligte Person: Farahnakian, Fahimeh ; Heikkonen, Jukka ; Jafarzadeh, Pouya
Link:
Veröffentlichung: Basel: MDPI - Multidisciplinary Digital Publishing Institute, 2023
Medientyp: E-Book
Umfang: 572
ISBN: 978-3-0365-6368-8 (print) ; 978-3-0365-6369-5 (print)
DOI: 10.3390/books978-3-0365-6369-5
Schlagwort:
  • tropical cyclone detection
  • meteorological satellite images
  • deep learning
  • deep transfer learning
  • generative adversarial networks
  • image target detection
  • multiple scales
  • any angle object
  • remote sensing of small objects
  • point clouds
  • 3D tracking
  • state estimation
  • Siamese network
  • deep LK
  • convolutional neural networks (CNNs)
  • multilayer feature aggregation
  • attention mechanism
  • remote sensing image scene classification (RSISC)
  • hyperspectral image classification
  • variational autoencoder
  • generative adversarial network
  • crossed spatial and spectral interactions
  • crater detection algorithm (CDA)
  • R-FCN
  • self-calibrated convolution
  • split attention mechanism
  • transfer learning
  • remote sensing
  • oriented object detection
  • rotated inscribed ellipse
  • remote sensing images
  • keypoint-based detection
  • gated aggregation
  • eccentricity-wise
  • object detection
  • remote sensing image
  • anchor free
  • oriented bounding boxes
  • deformable convolution
  • three-dimensional radar imaging
  • convolution neural network
  • super-resolution
  • side-lobe suppression
  • terahertz radar
  • aerial image generation
  • satellite image generation
  • structure map
  • style vector
  • high resolution image
  • self-constructing graph
  • semantic segmentation
  • GAN
  • image generation
  • data augmentation
  • remote sensing disaster image
  • convolutional neural network
  • double-stream structure
  • feedback
  • encoder–decoder network
  • dense connections
  • instance segmentation
  • Swin transformer
  • cascade mask R-CNN
  • remote sensing image retrieval
  • hashing algorithm
  • binary code
  • triplet ordinal relation preserving
  • cross entropy
  • feature distillation
  • forest fire
  • smoke segmentation
  • Smoke-Unet
  • residual block
  • Landsat-8
  • band sensibility
  • unsupervised domain adaptation
  • bidirectional domain adaptation
  • image-to-image translation
  • generative adversarial networks (GANs)
  • U-Net
  • high-density laser scanning
  • logging trails
  • digital surface model
  • canopy height model
  • commercial thinning
  • convolutional neural networks
  • multiview
  • satellite and UAV image
  • joint description
  • image matching
  • neural network
  • contextual information
  • Anchor Free Region Proposal Network
  • polar representation
  • 3D object detection
  • point cloud
  • sampling
  • single-stage
  • rotated object detection
  • angle-based detector
  • angle-free framework
  • rotated region of interests (RRoIs)
  • representative points
  • plastic
  • UAVs
  • contrastive learning
  • mutual guidance
  • spatial misalignment
  • vehicle detection
  • ANN
  • automatic classification
  • risk mitigation
  • machine learning
  • bic Book Industry Communication:T Technology, engineering, agriculture:TB Technology: general issues
  • bic Book Industry Communication:T Technology, engineering, agriculture:TB Technology: general issues:TBX History of engineering & technology
Sonstiges:
  • Nachgewiesen in: Directory of Open Access Books
  • Sprachen: English
  • Document Type: eBook
  • File Description: application/octet-stream
  • Language: English
  • Rights: Attribution 4.0 International ; URL: https://creativecommons.org/licenses/by/4.0/
  • Notes: ONIX_20230405_9783036563688_49

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