All Issue

2024 Vol.6, Issue 3 Preview Page

Research Article

30 September 2024. pp. 208-217
Abstract
References
1

Barnes, E.M., Clarke, T.R., Richards, S.E., Colaizzi, P.D., Haberland, J., Kostrzewski, M., Waller, P., Choi, C., Riley. E., Thompson, T., Lascano, R.J., Li, H., Moran, M.S. 2000. Coincident detection of crop water stress, nitrogen status and canopy density using ground based multispectral data. In Proceedings of the fifth international conference on precision agriculture, Bloomington, MN, USA (Vol. 1619, No. 6).

2

Bring, J. 1994. How to Standardize Regression Coefficients. The American Statistician 48(3): 209-213. https://doi.org/10.1080/00031305.1994.10476059

10.1080/00031305.1994.10476059
3

Cankaya, S., Balkaya, A., Karaagac, O. 2010. Canonical correlation analysis for the determination of relationships between plant characters and yield components in red pepper (Capsicum annuum L. var. conoides (Mill.) Irish) genotypes. Spanish Journal of Agricultural Research 8(1): 67-73. https://doi.org/10.5424/sjar/2010081-1144

10.5424/sjar/2010081-1144
4

Chen, R., Zhang, C., Xu, B., Zhu, Y., Zhao, F., Han, S., Yang, G., Yang, H. 2022. Predicting individual apple tree yield using UAV multi-source remote sensing data and ensemble learning. Computers and Electronics in Agriculture 201: 107275. https://doi.org/10.1016/j.compag.2022.107275

10.1016/j.compag.2022.107275
5

Delavarpour, N., Koparan, C., Nowatzki, J., Bajwa, S., Sun, X. 2021. A technical study on UAV characteristics for precision agriculture applications and associated practical challenges. Remote Sensing 13(6): 1204. https://doi.org/10.3390/rs13061204

10.3390/rs13061204
6

FAO (Food and Agriculture Organization of the United Nations). 2023. World Food Situation Accessed in https://www.fao.org/worldfoodsituation/foodpricesindex/en/ on 9 June 2024.

7

García-Martínez, H., Flores-Magdaleno, H., Khalil-Gardezi, A., Ascencio-Hernández, R., Tijerina-Chávez, L., Vázquez-Peña, M.A., Mancilla-Villa, O.R. 2020. Digital count of corn plants using images taken by unmanned aerial vehicles and cross correlation of templates. Agronomy 10(4): 469. https://doi.org/10.3390/agronomy10040469

10.3390/agronomy10040469
8

Haboudane, D., Miller, J.R., Tremblay, N., Zarco-Tejada, P.J., Dextraze, L. 2002. Integrated narrow-band vegetation indices for prediction of crop chlorophyll content for application to precision agriculture. Remote sensing of environment 81(2-3): 416-426. https://doi.org/10.1016/S0034-4257(02)00018-4

10.1016/S0034-4257(02)00018-4
9

Hu, J., Feng, H., Wang, Q., Shen, J., Wang, J., Liu, Y., Feng, H., Yang, H., Guo, W., Qiao, H., Niu, Q., Yue, J. 2024. Pretrained Deep Learning Networks and Multispectral Imagery Enhance Maize LCC, FVC, and Maturity Estimation. Remote Sensing 16(5): 784. https://doi.org/10.3390/rs16050784

10.3390/rs16050784
10

Huete, A. R. 1988. A soil-adjusted vegetation index (SAVI). Remote sensing of environment 25(3): 295-309.

10.1016/0034-4257(88)90106-X
11

Onoyama, H., Ryu, C., Suguri, M., Iida, M. 2018. Estimation of rice protein content before harvest using ground-based hyperspectral imaging and region of interest analysis 721-734. https://doi.org/10.1007/s11119-017-9552-3

10.1007/s11119-017-9552-3
12

Intergovernmental Panel of Climate Change. 2022. Climate Change 2022: Impacts, Adaptation and Vulnerability. https://doi.org/10.1017/9781009325844

10.1017/9781009325844
13

Kang, Y., Nam, J., Kim, Y., Lee, S., Seong, D., Jang, S., Ryu, C. 2021. Assessment of regression models for predicting rice yield and protein content using unmanned aerial vehicle-based multispectral imagery. Remote Sensing 13(8): 1508. https://doi.org/10.3390/rs13081508

10.3390/rs13081508
14

Kang, Y.S., Jang, S.H., Park, J.W., Song, H.Y., Ryu, C.S., Jun, S.R., Kim, S.H. 2020. Yield prediction and validation of onion (Allium cepa L.) using key variables in narrowband hyperspectral imagery and effective accumulated temperature. Computers and Electronics in Agriculture 178: 105667. https://doi.org/10.1016/j.compag.2020.105667

10.1016/j.compag.2020.105667
15

KREI (Korea Rural Economic Institute). 2017. Current status and improvement tasks of the dried pepper industry. [in Korean]

16

Kumar, C., Mubvumba, P., Huang, Y., Dhillon, J., Reddy, K. 2023. Multi-stage corn yield prediction using high-resolution UAV multispectral data and machine learning models. Agronomy 13(5): 1277. https://doi.org/10.3390/agronomy13051277

10.3390/agronomy13051277
17

Lewis, C.D. 1982. Industrial and business forecasting methods: A practical guide to exponential smoothing and curve fitting.

18

Li, B., Xu, X., Zhang, L., Han, J., Bian, C., Li, G., Liu, J., Jin, L. 2020. Above-ground biomass estimation and yield prediction in potato by using UAV-based RGB and hyperspectral imaging. ISPRS Journal of Photogrammetry and Remote Sensing 162: 161-172. https://doi.org/10.1016/j.isprsjprs.2020.02.013

10.1016/j.isprsjprs.2020.02.013
19

Marcial-Pablo, M.J., Gonzalez-Sanchez, A., Jimenez-Jimenez, S.I., Ontiveros-Capurata, R.E., Ojeda-Bustamante, W. 2018. Estimation of vegetation fraction using RGB and multispectral images from UAV (pp. 420-438). International Journal of Remote Sensing. https://doi.org/10.1080/01431161.2018.1528017

10.1080/01431161.2018.1528017
20

Naji, T.A. 2018. Study of vegetation cover distribution using DVI, PVI, WDVI indices with 2D-space plot. In Journal of physics: conference series (Vol. 1003, p. 012083). https://doi.org/10.1088/1742-6596/1003/1/012083

10.1088/1742-6596/1003/1/012083
21

Park C.G, Lee G.E. 2014. Linearity test statistics in a simple regression model. The Korean Data & Information Science Society 25(2): 305-315. [in Korean] https://doi.org/10.7465/jkdi.2014.25.2.305

10.7465/jkdi.2014.25.2.305
22

Ryu, C., Suguri, M., Umeda, M. 2009. Model for predicting the nitrogen content of rice at panicle initiation stage using data from airborne hyperspectral remote sensing. Biosystems Engineering 104(4): 465-475. https://doi.org/10.1016/j.biosystemseng.2009.09.002

10.1016/j.biosystemseng.2009.09.002
23

Ryu, J.S., Oh, D.H., and Cho, J.I. 2021. Simple method for extracting the seasonal signals of photochemical reflectance index and normalized difference vegetation index measured using a spectral reflectance sensor. Journal of Integrative Agriculture 20(7): 1969-1986. https://doi.org/10.1016/S2095-3119(20)63410-4

10.1016/S2095-3119(20)63410-4
24

Seber, G.A., Lee, A.J. 2012. Linear regression analysis. John Wiley & Sons.

25

Shrestha, N. 2020. Detecting multicollinearity in regression analysis. American Journal of Applied Mathematics and Statistics 8(2): 39-42. https://doi.org/10.12691/ajams-8-2-1

10.12691/ajams-8-2-1
26

Sripada, R.P., Heiniger, R.W., White, J.G., Meijer, A.D. 2006. Aerial color infrared photography for determining early in‐season nitrogen requirements in corn. Agronomy Journal 98(4): 968-977. https://doi.org/10.2134/agronj2005.0200

10.2134/agronj2005.0200
27

Stehr, N.J. 2015. Drones: The newest technology for precision agriculture. Natural Sciences Education 44(1): 89-91. https://doi.org/ 10.4195/nse2015.04.0772

10.4195/nse2015.04.0772
28

Su, J., Zhu, X., Li, S., Chen, W.H. 2023. AI meets UAVs: A survey on AI empowered UAV perception systems for precision agriculture. Neurocomputing 518: 242-270. https://doi.org/10.1016/j.neucom.2022.11.020

10.1016/j.neucom.2022.11.020
29

Xue, J., Su, B. 2017. Significant remote sensing vegetation indices: A review of developments and applications. Journal of sensors 2017. https://doi.org/10.1155/2017/1353691

10.1155/2017/1353691
30

Yaghobi, S., Heidarizadi, Z., Mirzapour, H. 2019. Comparing NDVI and RVI for forest density estimation and their relationships with rainfall (Case study: Malekshahi, Ilam Province). Environmental Resources Research 7(2): 117-128.

31

Yang, J., Rahardja, S., Fränti, P. 2019. Outlier detection: how to threshold outlier scores?. In Proceedings of the international conference on artificial intelligence, information processing and cloud computing pp. 1-6. New York, United States. https://doi.org/10.1145/3371425.3371427

10.1145/3371425.3371427
32

Yang J.Y., Jeong S.Y., Lee H.S. 2022. Based on the predictive model and Visualization-regression analysis according to the resulting variables using R. Journal of Health Informatics and Statistics. 47: 21-30. [in Korean] https://doi.org/10.21032/jhis.2022.47.S2.S21

10.21032/jhis.2022.47.S2.S21
33

Yang, S., Li, L., Fei, S., Yang, M., Tao, Z., Meng, Y., Xiao, Y. 2024. Wheat yield prediction using machine learning method based on UAV remote sensing data. Drones 8(7): 284. https://doi.org/10.3390/drones8070284

10.3390/drones8070284
34

Yohanani, E., Frisch, A., Lukyanov, V., Cohen, S., Teitel, M., Tanny, J. 2022. Estimating evapotranspiration of screenhouse banana plantations using artificial neural network and multiple linear regression models. Water 14(7): 1130. https://doi.org/10.3390/ w14071130

10.3390/w14071130
35

Yoon J.B, Yoon Y.N, Kim Y.H. 2021. Utilization of Vegetation Indices in Agricultural Field. Journal of Agriculture & Life Science. [in Korean]

36

Zhu, P., Burney, J., Chang, J., Jin, Z., Mueller, N. D., Xin, Q., Xu, J., Makowski, D. Ciais, P. 2022. Warming reduces global agricultural production by decreasing cropping frequency and yields. Nature Climate Change 12(11): 1016-1023. https://doi.org/10.1038/ s41558-022-01492-5

10.1038/s41558-022-01492-5
Information
  • Publisher :Korean Society of Precision Agriculture
  • Publisher(Ko) :한국정밀농업학회
  • Journal Title :Precision Agriculture Science and Technology
  • Journal Title(Ko) :정밀농업과학기술
  • Volume : 6
  • No :3
  • Pages :208-217
  • Received Date : 2024-08-03
  • Revised Date : 2024-09-27
  • Accepted Date : 2024-09-27