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Water stress level classification of sweet potato using infrared thermal imaging and plant growth indicatorsWater stress level classification of sweet potato using infrared thermal imaging and plant growth indicators

Other Titles
Water stress level classification of sweet potato using infrared thermal imaging and plant growth indicators
Authors
최지원조수빈황윤조병관송대빈김건우
Issue Date
Dec-2024
Publisher
충남대학교 농업과학연구소
Keywords
artificial intelligence (AI); machine learning; sweet potato; water stress; yield
Citation
Korean Journal of Agricultural Science, v.51, no.4, pp 751 - 763
Pages
13
Indexed
KCI
Journal Title
Korean Journal of Agricultural Science
Volume
51
Number
4
Start Page
751
End Page
763
URI
https://scholarworks.gnu.ac.kr/handle/sw.gnu/75245
DOI
10.7744/kjoas.510425
ISSN
2466-2402
2466-2410
Abstract
Recently, sudden droughts and floods due to the average temperature increase have become frequent and have become an emerging issue worldwide. It has caused serious decline in agricultural yield and product quality. Also, even though sweet potato is well known for growing under harsh environment, its yield can be affected by abnormal climates. Therefore, the importance of water stress monitoring of sweet potatoes has drawn substantial attention. As a result, a lot of research is being conducted. Then, various water stress level monitoring techniques have been recently developed. Therefore, in the current study, a nondestructive evaluation technique has been suggested for the water stress level evaluation of field-grown sweet potatoes. To accomplish this, thermal imagery and support vector machine (SVM) tech- nique was used and a classifier for water stress evaluation (CSE) was developed. In addition, crop water stress index (CWSI) was derived from acquired thermal imagery and plat growth indices was used for developing the CSE. Consequently, the accuracy of the newly developed CSE was about 0.86. This study has demonstrated that CSE can be used to quantify water level stress and control the amount of irrigation water. Furthermore, based on the developed technique, the water stress level of different field-grown crops will be promising.
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농업생명과학대학 > 생물산업기계공학과 > Journal Articles

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농업생명과학대학 (생물산업기계공학과)
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