Comparison of Spatio-temporal Fusion Models of Multiple Satellite Images for Vegetation Monitoring

Citations

SCOPUS

8

초록

For consistent vegetation monitoring, it is necessary to generate time-series vegetation index datasets at fine temporal and spatial scales by fusing the complementary characteristics between temporal and spatial scales of multiple satellite data. In this study, we quantitatively and qualitatively analyzed the prediction accuracy of time-series change information extracted from spatio-temporal fusion models of multiple satellite data for vegetation monitoring. As for the spatio-temporal fusion models, we applied two models that have been widely employed to vegetation monitoring, including a Spatial and Temporal Adaptive Reflectance Fusion Model (STARFM) and an Enhanced Spatial and Temporal Adaptive Reflectance Fusion Model (ESTARFM). To quantitatively evaluate the prediction accuracy, we first generated simulated data sets from MODIS data with fine temporal scales and then used them as inputs for the spatio-temporal fusion models. We observed from the comparative experiment that ESTARFM showed better prediction performance than STARFM, but the prediction performance for the two models became degraded as the difference between the prediction date and the simultaneous acquisition date of the input data increased. This result indicates that multiple data acquired close to the prediction date should be used to improve the prediction accuracy. When considering the limited availability of optical images, it is necessary to develop an advanced spatio-temporal model that can reflect the suggestions of this study for vegetation monitoring. © 2019 Korean Society of Remote Sensing. All rights reserved.

키워드

MODISSpatio-temporal FusionVegetation IndexVegetation Monitoring
제목
Comparison of Spatio-temporal Fusion Models of Multiple Satellite Images for Vegetation Monitoring
저자
Kim, YeseulPark, No-Wook
DOI
10.7780/kjrs.2019.35.6.3.5
발행일
2019
유형
Article
저널명
대한원격탐사학회지
35
6-3
페이지
1209 ~ 1219