ETRI-Knowledge Sharing Plaform

ENGLISH

성과물

논문 검색
구분 SCI
연도 ~ 키워드

상세정보

학술대회 Image-based Disease Diagnosing and Predicting of the Crops through the Deep Learning Mechanism
Cited 21 time in scopus Download 1 time Share share facebook twitter linkedin kakaostory
저자
박현, 은지숙, 김세한
발행일
201710
출처
International Conference on Information and Communication Technology Convergence (ICTC) 2017, pp.129-131
DOI
https://dx.doi.org/10.1109/ICTC.2017.8190957
협약과제
17HH1400, 스마트팜 확산을 위한 클라우드 기반 스마트베드 시스템 및 Farm-As-A-Service 기술 개발, 김세한
초록
The crop productivity depends on environmental factors or product resources, such as temperature, humidity, labor and electrical costs. However, above all, crop disease is the crucial factor and causes 20-30% reduction of the productivity in case of its infection. Thus, the disease of the crop is the important factor affecting the productivity of the crops. Therefore, the farmer concentrates on the cause of the disease in the crops during its growth, but it is not easy to recognize the disease on the spot. Until now, they just relied on the opinion of the experts or their own experiences when the disease is doubtful. However, it triggers a decrease in productivity as no taking appropriate action and time. In this paper, to address this problem the mechanism, which dynamically analyses the images of the disease, is provided. The analysis result is immediately sent to the farmer required the decision and then feedback from the farmer is reflected to the model. The mechanism performs the diagnosing and predicting of the disease with data set of images using deep learning. Thus, it encourages increasing of the productivity through the fast recognition of disease and the consequent action.
키워드
CNN, Crops, Deep Learning, diagnosing, Image-based, Strawberry disease
KSP 제안 키워드
Crop disease, Crop productivity, Data sets, Environmental factor(E-factor), Image-based, deep learning(DL), learning mechanism