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고해상도 광학영상에서 산림병충해 탐지를 위한 심층전이학습 방법 개선 = Improvement of Deep Transfer Learning Methods for Detecting Forest Disease from High-resolution Optical Images' 의 주제별 논문영향력
논문영향력 요약
주제
고해상도 위성영상
무인기 영상
산림병충해
심층학습
영상변환
자가 학습
전이학습
동일주제 총논문수
논문피인용 총횟수
주제별 논문영향력의 평균
247
0
0.0%
주제별 논문영향력
논문영향력
주제
주제별 논문수
주제별 피인용횟수
주제별 논문영향력
주제어
고해상도 위성영상
22
0
0.0%
무인기 영상
1
0
0.0%
산림병충해
1
0
0.0%
심층학습
126
0
0.0%
영상변환
2
0
0.0%
자가 학습
15
0
0.0%
전이학습
80
0
0.0%
계
247
0
0.0%
* 다른 주제어 보유 논문에서 피인용된 횟수
0
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고해상도 광학영상에서 산림병충해 탐지를 위한 심층전이학습 방법 개선 = Improvement of Deep Transfer Learning Methods for Detecting Forest Disease from High-resolution Optical Images' 의 참고문헌
준감독 학습과 공간 유사성을 이용한 비접 근 지역의 작물 분류-북한 대홍단 지역 사례 연구
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고해상도 광학영상에서 산림병충해 탐지를 위한 심층전이학습 방법 개선 = Improvement of Deep Transfer Learning Methods for Detecting Forest Disease from High-resolution Optical Images'
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