A CNN Image Classification Analysis for 'Clean-Coast Detector' as Tourism Service Distribution |
CHANG, Mona
(Dept. of Tourism Development, Jeju National University)
XING, Yuan Yuan (Dept. of Management Information System, Jeju National University) ZHANG, Qi Yue (Dept. of Management Information System, Jeju National University) HAN, Sang-Jin (Dept. of Business Administration, Jeju National University) KIM, Mincheol (Dept. of Management Information System, & Chief of Tourism, Business, and Economic Research Institute, Jeju National University) |
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