Matches in SemOpenAlex for { <https://semopenalex.org/work/W4321609173> ?p ?o ?g. }
- W4321609173 endingPage "225" @default.
- W4321609173 startingPage "217" @default.
- W4321609173 abstract "In this paper, an IoT and deep learning-based comprehensive study to reduce the effects of COVID-19 on the education system is presented. The proposed system consists of an edge device, IoT nodes, and a neural network that runs on a server. The purpose of the proposed system is to protect students and staff against infectious diseases and increase the students performance during classes by monitoring the environmental conditions via an IoT-based sensor network, during the current pandemic to ensure the use of masks in closed areas by training a customized deep learning model, and to monitor the student attendance data by deep learning and IoT-based solution. Furthermore, effective heating and cooling can be done to save energy by transmitting the environmental conditions of the indoor environment to the relevant destinations. The experiment is conducted with five different networks to classify the faces in the images as masked or unmasked, and their performances were examined. The networks were trained on the Face Mask Detection Dataset which contains a total of 7553 masked and unmasked images. The best results were obtained as 99.5% for the F1 Score and 99% for MCC by the model trained on the InceptionV3 network." @default.
- W4321609173 created "2023-02-24" @default.
- W4321609173 creator A5001516726 @default.
- W4321609173 creator A5002145536 @default.
- W4321609173 date "2023-05-01" @default.
- W4321609173 modified "2023-10-01" @default.
- W4321609173 title "A System Design With Deep Learning and IoT to Ensure Education Continuity for Post-COVID" @default.
- W4321609173 cites W1921147789 @default.
- W4321609173 cites W2043891653 @default.
- W4321609173 cites W2145287260 @default.
- W4321609173 cites W2155893237 @default.
- W4321609173 cites W2158731622 @default.
- W4321609173 cites W2164963128 @default.
- W4321609173 cites W2165698076 @default.
- W4321609173 cites W2508251591 @default.
- W4321609173 cites W2523065612 @default.
- W4321609173 cites W2774082680 @default.
- W4321609173 cites W2797558164 @default.
- W4321609173 cites W2808804937 @default.
- W4321609173 cites W2963839617 @default.
- W4321609173 cites W2971058209 @default.
- W4321609173 cites W2984541004 @default.
- W4321609173 cites W2999096842 @default.
- W4321609173 cites W3016207602 @default.
- W4321609173 cites W3016849874 @default.
- W4321609173 cites W3019457420 @default.
- W4321609173 cites W3020762743 @default.
- W4321609173 cites W3022007317 @default.
- W4321609173 cites W3023398824 @default.
- W4321609173 cites W3024387817 @default.
- W4321609173 cites W3080519619 @default.
- W4321609173 cites W3088154753 @default.
- W4321609173 cites W3088158924 @default.
- W4321609173 cites W3095933406 @default.
- W4321609173 cites W3096383643 @default.
- W4321609173 cites W3096567859 @default.
- W4321609173 cites W3099206234 @default.
- W4321609173 cites W3101490008 @default.
- W4321609173 cites W3105153358 @default.
- W4321609173 cites W3114687924 @default.
- W4321609173 cites W3118686492 @default.
- W4321609173 cites W3118694803 @default.
- W4321609173 cites W3124508579 @default.
- W4321609173 cites W3128758033 @default.
- W4321609173 cites W3132913549 @default.
- W4321609173 cites W3133542101 @default.
- W4321609173 cites W3134154885 @default.
- W4321609173 cites W3155673684 @default.
- W4321609173 cites W3155757473 @default.
- W4321609173 cites W3162760148 @default.
- W4321609173 cites W3165298594 @default.
- W4321609173 cites W3173502443 @default.
- W4321609173 cites W3182007846 @default.
- W4321609173 cites W3191821949 @default.
- W4321609173 cites W3194818956 @default.
- W4321609173 cites W3203250888 @default.
- W4321609173 cites W3208096854 @default.
- W4321609173 cites W3216543548 @default.
- W4321609173 cites W4220799659 @default.
- W4321609173 cites W4295788782 @default.
- W4321609173 doi "https://doi.org/10.1109/tce.2023.3245129" @default.
- W4321609173 hasPublicationYear "2023" @default.
- W4321609173 type Work @default.
- W4321609173 citedByCount "0" @default.
- W4321609173 crossrefType "journal-article" @default.
- W4321609173 hasAuthorship W4321609173A5001516726 @default.
- W4321609173 hasAuthorship W4321609173A5002145536 @default.
- W4321609173 hasConcept C108583219 @default.
- W4321609173 hasConcept C119857082 @default.
- W4321609173 hasConcept C142724271 @default.
- W4321609173 hasConcept C154945302 @default.
- W4321609173 hasConcept C162324750 @default.
- W4321609173 hasConcept C24590314 @default.
- W4321609173 hasConcept C2778173179 @default.
- W4321609173 hasConcept C2779134260 @default.
- W4321609173 hasConcept C3008058167 @default.
- W4321609173 hasConcept C31258907 @default.
- W4321609173 hasConcept C38652104 @default.
- W4321609173 hasConcept C41008148 @default.
- W4321609173 hasConcept C44154836 @default.
- W4321609173 hasConcept C50522688 @default.
- W4321609173 hasConcept C50644808 @default.
- W4321609173 hasConcept C524204448 @default.
- W4321609173 hasConcept C71924100 @default.
- W4321609173 hasConcept C79403827 @default.
- W4321609173 hasConcept C81860439 @default.
- W4321609173 hasConcept C93996380 @default.
- W4321609173 hasConceptScore W4321609173C108583219 @default.
- W4321609173 hasConceptScore W4321609173C119857082 @default.
- W4321609173 hasConceptScore W4321609173C142724271 @default.
- W4321609173 hasConceptScore W4321609173C154945302 @default.
- W4321609173 hasConceptScore W4321609173C162324750 @default.
- W4321609173 hasConceptScore W4321609173C24590314 @default.
- W4321609173 hasConceptScore W4321609173C2778173179 @default.
- W4321609173 hasConceptScore W4321609173C2779134260 @default.
- W4321609173 hasConceptScore W4321609173C3008058167 @default.
- W4321609173 hasConceptScore W4321609173C31258907 @default.
- W4321609173 hasConceptScore W4321609173C38652104 @default.