Survey on encode biometric data for transmission in wireless communication networks
The aim of this research survey is to review an enhanced model supported by artificial intelligence to encode biometric data for transmission in wireless communication networks can be tricky as performance decreases with increasing size due to interference, especially if channels and network topolog...
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International University of Sarajevo
2023
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my.uniten.dspace-263612023-05-29T17:09:33Z Survey on encode biometric data for transmission in wireless communication networks Ali M.H. Ibrahim A. Wahbah H. Al_Barazanchi I. 57693508600 55601001400 57447176800 57659035200 The aim of this research survey is to review an enhanced model supported by artificial intelligence to encode biometric data for transmission in wireless communication networks can be tricky as performance decreases with increasing size due to interference, especially if channels and network topology are not selected carefully beforehand. Additionally, network dissociations may occur easily if crucial links fail as redundancy is neglected for signal transmission. Therefore, we present several algorithms and its implementation which addresses this problem by finding a network topology and channel assignment that minimizes interference and thus allows a deployment to increase its throughput performance by utilizing more bandwidth in the local spectrum by reducing coverage as well as connectivity issues in multiple AI-based techniques. Our evaluation survey shows an increase in throughput performance of up to multiple times or more compared to a baseline scenario where an optimization has not taken place and only one channel for the whole network is used with AI-based techniques. Furthermore, our solution also provides a robust signal transmission which tackles the issue of network partition for coverage and for single link failures by using airborne wireless network. The highest end-to-end connectivity stands at 10 Mbps data rate with a maximum propagation distance of several kilometers. The transmission in wireless network coverage depicted with several signal transmission data rate with 10 Mbps as it has lowest coverage issue with moderate range of propagation distance using enhanced model to encode biometric data for transmission in wireless communication. � 2021. The Author. All Rights Reserved. Final 2023-05-29T09:09:33Z 2023-05-29T09:09:33Z 2021 Article 10.21533/pen.v9i4.2570 2-s2.0-85129331472 https://www.scopus.com/inward/record.uri?eid=2-s2.0-85129331472&doi=10.21533%2fpen.v9i4.2570&partnerID=40&md5=bc230fd922c29039c012ca1a767f59d9 https://irepository.uniten.edu.my/handle/123456789/26361 9 4 1038 1055 All Open Access, Gold International University of Sarajevo Scopus |
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The aim of this research survey is to review an enhanced model supported by artificial intelligence to encode biometric data for transmission in wireless communication networks can be tricky as performance decreases with increasing size due to interference, especially if channels and network topology are not selected carefully beforehand. Additionally, network dissociations may occur easily if crucial links fail as redundancy is neglected for signal transmission. Therefore, we present several algorithms and its implementation which addresses this problem by finding a network topology and channel assignment that minimizes interference and thus allows a deployment to increase its throughput performance by utilizing more bandwidth in the local spectrum by reducing coverage as well as connectivity issues in multiple AI-based techniques. Our evaluation survey shows an increase in throughput performance of up to multiple times or more compared to a baseline scenario where an optimization has not taken place and only one channel for the whole network is used with AI-based techniques. Furthermore, our solution also provides a robust signal transmission which tackles the issue of network partition for coverage and for single link failures by using airborne wireless network. The highest end-to-end connectivity stands at 10 Mbps data rate with a maximum propagation distance of several kilometers. The transmission in wireless network coverage depicted with several signal transmission data rate with 10 Mbps as it has lowest coverage issue with moderate range of propagation distance using enhanced model to encode biometric data for transmission in wireless communication. � 2021. The Author. All Rights Reserved. |
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57693508600 Ali M.H. Ibrahim A. Wahbah H. Al_Barazanchi I. |
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Ali M.H. Ibrahim A. Wahbah H. Al_Barazanchi I. |
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Ali M.H. Ibrahim A. Wahbah H. Al_Barazanchi I. Survey on encode biometric data for transmission in wireless communication networks |
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Ali M.H. |
title |
Survey on encode biometric data for transmission in wireless communication networks |
title_short |
Survey on encode biometric data for transmission in wireless communication networks |
title_full |
Survey on encode biometric data for transmission in wireless communication networks |
title_fullStr |
Survey on encode biometric data for transmission in wireless communication networks |
title_full_unstemmed |
Survey on encode biometric data for transmission in wireless communication networks |
title_sort |
survey on encode biometric data for transmission in wireless communication networks |
publisher |
International University of Sarajevo |
publishDate |
2023 |
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1806426500457562112 |