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dc.contributor.authorKung, Hsu-Yang*
dc.contributor.authorChen, Chi-Hua*
dc.contributor.authorHorng, Mong-Fong*
dc.contributor.authorHwang, Feng-Jang*
dc.date.accessioned2021-02-11T11:03:13Z
dc.date.available2021-02-11T11:03:13Z
dc.date.issued2020*
dc.date.submitted2020-06-09 16:38:57*
dc.identifier46102*
dc.identifier.urihttps://directory.doabooks.org/handle/20.500.12854/44630
dc.description.abstractThis book collects 14 articles from the Special Issue entitled “Deep Learning Applications with Practical Measured Results in Electronics Industries” of Electronics. Topics covered in this Issue include four main parts: (1) environmental information analyses and predictions, (2) unmanned aerial vehicle (UAV) and object tracking applications, (3) measurement and denoising techniques, and (4) recommendation systems and education systems. These authors used and improved deep learning techniques (e.g., ResNet (deep residual network), Faster-RCNN (faster regions with convolutional neural network), LSTM (long short term memory), ConvLSTM (convolutional LSTM), GAN (generative adversarial network), etc.) to analyze and denoise measured data in a variety of applications and services (e.g., wind speed prediction, air quality prediction, underground mine applications, neural audio caption, etc.). Several practical experiments were conducted, and the results indicate that the performance of the presented deep learning methods is improved compared with the performance of conventional machine learning methods.*
dc.languageEnglish*
dc.subjectTA1-2040*
dc.subjectT1-995*
dc.subject.classificationthema EDItEUR::T Technology, Engineering, Agriculture, Industrial processes::TB Technology: general issues::TBX History of engineering and technologyen_US
dc.subject.otherfaster region-based CNN*
dc.subject.othervisual tracking*
dc.subject.otherintelligent tire manufacturing*
dc.subject.othereye-tracking device*
dc.subject.otherneural networks*
dc.subject.otherA**
dc.subject.otherinformation measure*
dc.subject.otheroral evaluation*
dc.subject.otherGSA-BP*
dc.subject.othertire quality assessment*
dc.subject.otherhumidity sensor*
dc.subject.otherrigid body kinematics*
dc.subject.otherintelligent surveillance*
dc.subject.otherresidual networks*
dc.subject.otherimaging confocal microscope*
dc.subject.otherupdate mechanism*
dc.subject.othermultiple linear regression*
dc.subject.othergeometric errors correction*
dc.subject.otherdata partition*
dc.subject.otherImaging Confocal Microscope*
dc.subject.otherimage inpainting*
dc.subject.otherlateral stage errors*
dc.subject.otherdot grid target*
dc.subject.otherK-means clustering*
dc.subject.otherunsupervised learning*
dc.subject.otherrecommender system*
dc.subject.otherunderground mines*
dc.subject.otherdigital shearography*
dc.subject.otheroptimization techniques*
dc.subject.othersaliency information*
dc.subject.othergated recurrent unit*
dc.subject.othermultivariate time series forecasting*
dc.subject.othermultivariate temporal convolutional network*
dc.subject.otherforeign object*
dc.subject.otherdata fusion*
dc.subject.otherupdate occasion*
dc.subject.othergenerative adversarial network*
dc.subject.otherCNN*
dc.subject.othercompressed sensing*
dc.subject.otherbackground model*
dc.subject.otherimage compression*
dc.subject.othersupervised learning*
dc.subject.othergeometric errors*
dc.subject.otherUAV*
dc.subject.othernonlinear optimization*
dc.subject.otherreinforcement learning*
dc.subject.otherconvolutional network*
dc.subject.otherneuro-fuzzy systems*
dc.subject.otherdeep learning*
dc.subject.otherimage restoration*
dc.subject.otherneural audio caption*
dc.subject.otherhyperspectral image classification*
dc.subject.otherneighborhood noise reduction*
dc.subject.otherGA*
dc.subject.otherMCM uncertainty evaluation*
dc.subject.otherbinary classification*
dc.subject.othercontent reconstruction*
dc.subject.otherkinematic modelling*
dc.subject.otherlong short-term memory*
dc.subject.othertransfer learning*
dc.subject.othernetwork layer contribution*
dc.subject.otherinstance segmentation*
dc.subject.othersmart grid*
dc.subject.otherunmanned aerial vehicle*
dc.subject.otherforecasting*
dc.subject.othertrajectory planning*
dc.subject.otherdiscrete wavelet transform*
dc.subject.othermachine learning*
dc.subject.othercomputational intelligence*
dc.subject.othertire bubble defects*
dc.subject.otheroffshore wind*
dc.subject.othermultiple constraints*
dc.subject.otherhuman computer interaction*
dc.subject.otherLeast Squares method*
dc.titleDeep Learning Applications with Practical Measured Results in Electronics Industries*
dc.typebook
oapen.identifier.doi10.3390/books978-3-03928-864-9*
oapen.relation.isPublishedBy46cabcaa-dd94-4bfe-87b4-55023c1b36d0*
oapen.relation.isbn9783039288649*
oapen.relation.isbn9783039288632*
oapen.pages272*
oapen.edition1st*


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