TY - JOUR
T1 - Satellite-Based Cabbage and Radish Yield Prediction Using Deep Learning in Kangwon-do
AU - Park, Hyebin
AU - Lee, Yejin
AU - Park, Seonyoung
N1 - Publisher Copyright:
Copyright © 2023 by The Korean Society of Remote Sensing.
PY - 2023
Y1 - 2023
N2 - In this study, a deep learning model was developed to predict the yield of cabbage and radish, one of the five major supply and demand management vegetables, using satellite images of Landsat 8. To predict the yield of cabbage and radish in Gangwon-do from 2015 to 2020, satellite images from June to September, the growing period of cabbage and radish, were used. Normalized difference vegetation index, enhanced vegetation index, lead area index, and land surface temperature were employed in this study as input data for the yield model. Crop yields can be effectively predicted using satellite images because satellites collect continuous spatiotemporal data on the global environment. Based on the model developed previous study, a model designed for input data was proposed in this study. Using time series satellite images, convolutional neural network, a deep learning model, was used to predict crop yield. Landsat 8 provides images every 16 days, but it is difficult to acquire images especially in summer due to the influence of weather such as clouds. As a result, yield prediction was conducted by splitting June to July into one part and August to September into two. Yield prediction was performed using a machine learning approach and reference models, and modeling performance was compared. The model’s performance and early predictability were assessed using year-by-year cross-validation and early prediction. The findings of this study could be applied as basic studies to predict the yield of field crops in Korea.
AB - In this study, a deep learning model was developed to predict the yield of cabbage and radish, one of the five major supply and demand management vegetables, using satellite images of Landsat 8. To predict the yield of cabbage and radish in Gangwon-do from 2015 to 2020, satellite images from June to September, the growing period of cabbage and radish, were used. Normalized difference vegetation index, enhanced vegetation index, lead area index, and land surface temperature were employed in this study as input data for the yield model. Crop yields can be effectively predicted using satellite images because satellites collect continuous spatiotemporal data on the global environment. Based on the model developed previous study, a model designed for input data was proposed in this study. Using time series satellite images, convolutional neural network, a deep learning model, was used to predict crop yield. Landsat 8 provides images every 16 days, but it is difficult to acquire images especially in summer due to the influence of weather such as clouds. As a result, yield prediction was conducted by splitting June to July into one part and August to September into two. Yield prediction was performed using a machine learning approach and reference models, and modeling performance was compared. The model’s performance and early predictability were assessed using year-by-year cross-validation and early prediction. The findings of this study could be applied as basic studies to predict the yield of field crops in Korea.
KW - Cabbage
KW - Crop yield prediction
KW - Deep learning
KW - Landsat 8
KW - Radish
UR - https://www.scopus.com/pages/publications/85177578456
U2 - 10.7780/kjrs.2023.39.5.3.11
DO - 10.7780/kjrs.2023.39.5.3.11
M3 - Article
AN - SCOPUS:85177578456
SN - 1225-6161
VL - 39
SP - 1031
EP - 1042
JO - Korean Journal of Remote Sensing
JF - Korean Journal of Remote Sensing
IS - 3-5
ER -