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210512 ||| eng |
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|a books978-3-03943-858-7
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|a 9783039438570
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|a 9783039438587
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|a Kim, Byung-Gyu
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|a Digital Signal, Image and Video Processing for Emerging Multimedia Technology
|h Elektronische Ressource
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|a Basel, Switzerland
|b MDPI - Multidisciplinary Digital Publishing Institute
|c 2021
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300 |
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|a 1 electronic resource (392 p.)
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|a machine learning
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|a video coding
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|a learning rate
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|a affine motion model
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|a saliency
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|a image deblurring
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|a block-compressive sensing (BCS)
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|a step-less adaptive sampling
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|a deep learning
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|a super-resolution
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|a weakly supervised attention map
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|a low light
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|a spatial and temporal
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|a lexicon
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|a adversarial loss
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|a surveillance
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|a capacitive touchscreen
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|a motion compensation
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|a WOW
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|a VVC
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|a ternary classification
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|a rate control
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|a motion estimation
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|a vector of locally aggregated descriptor
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|a YOLOv3
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|a MCV and MLV filters
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|a de-noising
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|a convolution neural network
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|a RetinaNet
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|a image fusion
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|a cloud system
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|a Faster R-CNN
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|a bayesian optimization
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|a public key cryptography (PKC)
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|a reversible data hiding
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|a image steganalysis
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|a deep leaning
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|a UNIWARD
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|a security
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|a MVD
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|a closed circuit television (CCTV)
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|a convolutional neural networks
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|a wrist-mounted DiverPAD
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|a genetic algorithms
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|a bit allocation
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|a ρ model
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|a content-based image retrieval
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|a multi-scale analysis
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|a CenterNet
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|a image classification
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|a texture
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|a scene recognition
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|a wavelet analysis
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|a frame complexity
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|a channel allocation
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|a SSD
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|a video surveillance
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|a SNIPER
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|a 3D
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|a privacy risk
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|a acauisition function
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|a noise reduction
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|a character order preserving
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|a quantization (signal)
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|a non-linear filters
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|a wavelet transform
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|a multiple feature
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|a image processing
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|a n/a
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|a perceptual loss
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|a flexible partitioning
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|a dependency detection
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|a generative adversarial network
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|a focus maps
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|a History of engineering and technology / bicssc
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|a reversible data hiding (RDH)
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|a pattern mining
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|a image similarity
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|a social media
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|a perspective motion model
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|a image stabilization
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|a image retrieval
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|a RFCN
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|a object detection
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|a electrical insulator
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|a Wiener-Granger causality
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|a edge preserving
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|a multiview high efficiency video coding
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|a marine leisure activities
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|a fire and smoke detection
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|a sentiment analysis
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|a image restoration
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|a coefficient of variation
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|a depth map
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|a UAVs
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|a VisDrone2019
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|a optical flow
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|a inter-component prediction
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|a trimaps
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|a moving object
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|a error analysis
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|a multi-focus
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|a cloud computing
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|a classification
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|a convolutional neural network (CNN)
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|a deep neural architecture
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|a surveillance system
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|a pattern recognition
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|a noise removal
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|a aerial imagery
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|a gaussian process
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|a scalable video coding
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|a Wasserstein distance
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|a denoise
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|a Kim, Byung-Gyu
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0 |
7 |
|a eng
|2 ISO 639-2
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|b DOAB
|a Directory of Open Access Books
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|a Creative Commons (cc), https://creativecommons.org/licenses/by/4.0/
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|a 10.3390/books978-3-03943-858-7
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|u https://www.mdpi.com/books/pdfview/book/3346
|7 0
|x Verlag
|3 Volltext
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4 |
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|u https://directory.doabooks.org/handle/20.500.12854/68336
|z DOAB: description of the publication
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|a 720
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|a 900
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|a This book presents collective works published in the recent Special Issue (SI) entitled " Digital Signal, Image and Video Processing for Emerging Multimedia Technology". These works address the emerging technology in signal processing and its new aspects, as well as the related applications. Recent developments in image/video-based deep learning technology have enabled new services in the field of multimedia and recognition technology. The applications vary and range from digital signal processing to image, video and multimedia signal processing, also including object classification, learning mechanism design and data security. Recent advances in numerical, theoretical and experimental methodologies are presented within the scope of the current book, along with the finding of new learning methods and new methodological developments and their limitations. This book brings together a collection of inter-/multidisciplinary works applied to many classification and data security applications in a coherent manner.
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