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A Survey on Deep Transfer Learning and Edge Computing for Mitigating the COVID-19
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Zitationen
4
Autoren
2020
Jahr
Abstract
Highlights of the article are:<div>• Presented a systematic study of Deep Learning (DL), Deep Transfer Learning (DTL) and Edge Computing(EC) to mitigate COVID-19.</div><div>• Surveyed on existing DL, DTL, EC, and Dataset to mitigate pandemics with potentialities and challenges. </div><div>• Drawn a precedent pipeline model of DTL over EC for a future scope to mitigate any outbreaks.</div><div>• Given brief analyses and challenges wherever relevant in perspective of COVID-19.</div>
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