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Estimating plant height of red pepper using unmanned aerial vehicle-based multi spectral imageryEstimating plant height of red pepper using unmanned aerial vehicle-based multi spectral imagery

Other Titles
Estimating plant height of red pepper using unmanned aerial vehicle-based multi spectral imagery
Authors
Chang-Hyeok Park유찬석정종찬Gang-In JeYe Seong Kang
Issue Date
Sep-2024
Publisher
사단법인 한국정밀농업학회
Keywords
Red pepper; Growth information; Multispectral image; Vegetation indices; Linear regression model Red pepper; Growth information; Multispectral image; Vegetation indices; Linear regression model
Citation
Precision Agriculture Science and Technology, v.6, no.3, pp 208 - 217
Pages
10
Indexed
KCICANDI
Journal Title
Precision Agriculture Science and Technology
Volume
6
Number
3
Start Page
208
End Page
217
URI
https://scholarworks.gnu.ac.kr/handle/sw.gnu/74243
DOI
10.22765/pastj.20240015
ISSN
2672-0086
Abstract
This study was conducted to develop the plant height estimation model for pepper using vegetation indicies of multispectral imagery using an Unmanned Aerial Vehicle. There were no models to satisfy the conditions (R2T >0.6, MAPE < 10%), despite significant results in both the multiples linear regressions with Green and Blue bands selected by VIF and the simple linear regressions. The multiple linear regression model using PRI, GRVI, and SAVI selected as VIF satisfied the conditions regardless of the ratio of learning data. The 6:4 ratio model was selected as the best model because its validation performance (R2T = 0.638, RMSET = 2.245 cm, MAPET = 1.183%, R2V = 0.338, RMSEV = 3.980 cm, MAPEV = 4.096%) was better than the others, even though the 7:3 ratio model had a higher R2 value. The standardized regression coefficients of the selected model were PRI, SAVI, and GRVI, in that order. When estimating the plant height of peppers, multiple linear regression was more accurate than simple linear regression.
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농업생명과학대학 > 생물산업기계공학과 > Journal Articles
농업생명과학대학 > 스마트농산업학과 > Journal Articles

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농업생명과학대학 (생물산업기계공학과)
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