Advanced Computational Intelligence for Object Detection, Feature Extraction and Recognition in Smart Sensor Environments

Recent years have seen a vast development in various methodologies for object detection and feature extraction and recognition, both in theory and in practice. When processing images, videos, or other types of multimedia, one needs efficient solutions to perform fast and reliable processing. Computa...

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Bibliographic Details
Other Authors: Woźniak, Marcin (Editor)
Format: Book Chapter
Published: Basel, Switzerland MDPI - Multidisciplinary Digital Publishing Institute 2021
Subjects:
SVM
CNN
RFI
n/a
Online Access:Get Fullteks
DOAB: description of the publication
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020 |a books978-3-0365-1269-3 
020 |a 9783036512686 
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024 7 |a 10.3390/books978-3-0365-1269-3  |c doi 
041 0 |a English 
042 |a dc 
072 7 |a KNTX  |2 bicssc 
100 1 |a Woźniak, Marcin  |4 edt 
700 1 |a Woźniak, Marcin  |4 oth 
245 1 0 |a Advanced Computational Intelligence for Object Detection, Feature Extraction and Recognition in Smart Sensor Environments 
260 |a Basel, Switzerland  |b MDPI - Multidisciplinary Digital Publishing Institute  |c 2021 
300 |a 1 electronic resource (454 p.) 
506 0 |a Open Access  |2 star  |f Unrestricted online access 
520 |a Recent years have seen a vast development in various methodologies for object detection and feature extraction and recognition, both in theory and in practice. When processing images, videos, or other types of multimedia, one needs efficient solutions to perform fast and reliable processing. Computational intelligence is used for medical screening where the detection of disease symptoms is carried out, in prevention monitoring to detect suspicious behavior, in agriculture systems to help with growing plants and animal breeding, in transportation systems for the control of incoming and outgoing transportation, for unmanned vehicles to detect obstacles and avoid collisions, in optics and materials for the detection of surface damage, etc. In many cases, we use developed techniques which help us to recognize some special features. In the context of this innovative research on computational intelligence, the Special Issue "Advanced Computational Intelligence for Object Detection, Feature Extraction and Recognition in Smart Sensor Environments" present an excellent opportunity for the dissemination of recent results and achievements for further innovations and development. It is my pleasure to present this collection of excellent contributions to the research community. - Prof. Marcin Woźniak, Silesian University of Technology, Poland - 
540 |a Creative Commons  |f https://creativecommons.org/licenses/by/4.0/  |2 cc  |4 https://creativecommons.org/licenses/by/4.0/ 
546 |a English 
650 7 |a Information technology industries  |2 bicssc 
653 |a Traffic sign detection and tracking (TSDR) 
653 |a advanced driver assistance system (ADAS) 
653 |a computer vision 
653 |a 3D convolutional neural networks 
653 |a machine learning 
653 |a CT brain 
653 |a brain hemorrhage 
653 |a visual inspection 
653 |a one-class classifier 
653 |a grow-when-required neural network 
653 |a evolving connectionist systems 
653 |a automatic design 
653 |a bio-inspired techniques 
653 |a artificial bee colony 
653 |a image analysis 
653 |a feature extraction 
653 |a ship classification 
653 |a marine systems 
653 |a citrus 
653 |a pests and diseases identification 
653 |a convolutional neural network 
653 |a parameter efficiency 
653 |a vehicle detection 
653 |a YOLOv2 
653 |a focal loss 
653 |a anchor box 
653 |a multi-scale 
653 |a deep learning 
653 |a neural network 
653 |a generative adversarial network 
653 |a synthetic images 
653 |a tool wear monitoring 
653 |a superalloy tool 
653 |a image recognition 
653 |a object detection 
653 |a UAV imagery 
653 |a vehicular traffic flow detection 
653 |a vehicular traffic flow classification 
653 |a vehicular traffic congestion 
653 |a video classification 
653 |a benchmark 
653 |a semantic segmentation 
653 |a atrous convolution 
653 |a spatial pooling 
653 |a ship radiated noise 
653 |a underwater acoustics 
653 |a surface electromyography (sEMG) 
653 |a convolution neural networks (CNNs) 
653 |a hand gesture recognition 
653 |a fabric defect 
653 |a mixed kernels 
653 |a cross-scale 
653 |a cascaded center-ness 
653 |a deformable localization 
653 |a continuous casting 
653 |a surface defects 
653 |a 3D imaging 
653 |a defect detection 
653 |a object detector 
653 |a object tracking 
653 |a activity measure 
653 |a Yolo 
653 |a deep sort 
653 |a Hungarian algorithm 
653 |a optical flows 
653 |a spatiotemporal interest points 
653 |a sports scene 
653 |a CT images 
653 |a convolutional neural networks 
653 |a hepatic cancer 
653 |a visual question answering 
653 |a three-dimensional (3D) vision 
653 |a reinforcement learning 
653 |a human-robot interaction 
653 |a few shot learning 
653 |a SVM 
653 |a CNN 
653 |a cascade classifier 
653 |a video surveillance 
653 |a RFI 
653 |a artefacts 
653 |a InSAR 
653 |a image processing 
653 |a pixel convolution 
653 |a thresholding 
653 |a nearest neighbor filtering 
653 |a data acquisition 
653 |a augmented reality 
653 |a pose estimation 
653 |a industrial environments 
653 |a information retriever sensor 
653 |a multi-hop reasoning 
653 |a evidence chains 
653 |a complex search request 
653 |a high-speed trains 
653 |a hunting 
653 |a non-stationary 
653 |a feature fusion 
653 |a multi-sensor fusion 
653 |a unmanned aerial vehicles 
653 |a drone detection 
653 |a UAV detection 
653 |a visual detection 
653 |a n/a 
856 4 0 |a www.oapen.org  |u https://mdpi.com/books/pdfview/book/4216  |7 0  |z Get Fullteks 
856 4 0 |a www.oapen.org  |u https://directory.doabooks.org/handle/20.500.12854/76767  |7 0  |z DOAB: description of the publication