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NTIS 바로가기Procedia computer science, v.167, 2020년, pp.1444 - 1451
Khan, Asharul Islam (Remote Sensing and GIS Research Center Sultan Qaboos University) , Al-Habsi, Salim (Gulf College)
Abstract During last few years the computer applications have gone dramatic transformation from simple data processing to machine learning, thanks to the availability and accessibility of huge volume of data collected through sensors and internet. The idea of machine learning demonstrates and propa...
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