A Spatio-Temporal Data Fusion Model for Generating NDVI Time Series in Heterogeneous Regions

Time series vegetation indices with high spatial resolution and high temporal frequency are important for crop growth monitoring and management. However, due to technical constraints and cloud contamination, it is difficult to obtain such datasets. In this study, a spatio-temporal vegetation index i...

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Main Authors: Chunhua Liao, Jinfei Wang, Ian Pritchard, Jiangui Liu, Jiali Shang
Format: Article
Language:English
Published: MDPI AG 2017-11-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/9/11/1125
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spelling doaj-9ba1b2dfae814dbba88a081faf63f9902020-11-25T01:41:36ZengMDPI AGRemote Sensing2072-42922017-11-01911112510.3390/rs9111125rs9111125A Spatio-Temporal Data Fusion Model for Generating NDVI Time Series in Heterogeneous RegionsChunhua Liao0Jinfei Wang1Ian Pritchard2Jiangui Liu3Jiali Shang4Department of Geography, Western University, London, ON N6A 5C2, CanadaDepartment of Geography, Western University, London, ON N6A 5C2, CanadaDepartment of Geography, Western University, London, ON N6A 5C2, CanadaScience and Technology Branch, Agriculture and Agri-Food Canada, 960 Carling Ave., Ottawa, ON K1A 0C6, CanadaScience and Technology Branch, Agriculture and Agri-Food Canada, 960 Carling Ave., Ottawa, ON K1A 0C6, CanadaTime series vegetation indices with high spatial resolution and high temporal frequency are important for crop growth monitoring and management. However, due to technical constraints and cloud contamination, it is difficult to obtain such datasets. In this study, a spatio-temporal vegetation index image fusion model (STVIFM) was developed to generate high spatial resolution Normalized Difference Vegetation Index (NDVI) time-series images with higher accuracy, since most of the existing methods have some limitations in accurately predicting NDVI in heterogeneous regions, or rely on very computationally intensive steps and land cover maps for heterogeneous regions. The STVIFM aims to predict the fine-resolution NDVI through understanding the contribution of each fine-resolution pixel to the total NDVI change, which was calculated from the coarse-resolution images acquired on two dates. On the one hand, it considers the difference in relationships between the fine- and coarse-resolution images on different dates and the difference in NDVI change rates at different growing stages. On the other hand, it neither needs to search similar pixels nor needs to use land cover maps. The Landsat-8 and MODIS data acquired over three test sites with different landscapes were used to test the spatial and temporal performance of the proposed model. Compared with the spatial and temporal adaptive reflectance fusion model (STARFM), enhanced spatial and temporal adaptive reflectance fusion model (ESTARFM) and the flexible spatiotemporal data fusion (FSDAF) method, the proposed STVIFM outperforms the STARFM and ESTARFM at three study sites and different stages when the land cover or NDVI changes were captured by the two pairs of fine- and coarse-resolution images, and it is more robust and less computationally intensive than the FSDAF.https://www.mdpi.com/2072-4292/9/11/1125spatio-temporaldata fusionLandsatMODISNDVItime-series
collection DOAJ
language English
format Article
sources DOAJ
author Chunhua Liao
Jinfei Wang
Ian Pritchard
Jiangui Liu
Jiali Shang
spellingShingle Chunhua Liao
Jinfei Wang
Ian Pritchard
Jiangui Liu
Jiali Shang
A Spatio-Temporal Data Fusion Model for Generating NDVI Time Series in Heterogeneous Regions
Remote Sensing
spatio-temporal
data fusion
Landsat
MODIS
NDVI
time-series
author_facet Chunhua Liao
Jinfei Wang
Ian Pritchard
Jiangui Liu
Jiali Shang
author_sort Chunhua Liao
title A Spatio-Temporal Data Fusion Model for Generating NDVI Time Series in Heterogeneous Regions
title_short A Spatio-Temporal Data Fusion Model for Generating NDVI Time Series in Heterogeneous Regions
title_full A Spatio-Temporal Data Fusion Model for Generating NDVI Time Series in Heterogeneous Regions
title_fullStr A Spatio-Temporal Data Fusion Model for Generating NDVI Time Series in Heterogeneous Regions
title_full_unstemmed A Spatio-Temporal Data Fusion Model for Generating NDVI Time Series in Heterogeneous Regions
title_sort spatio-temporal data fusion model for generating ndvi time series in heterogeneous regions
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2017-11-01
description Time series vegetation indices with high spatial resolution and high temporal frequency are important for crop growth monitoring and management. However, due to technical constraints and cloud contamination, it is difficult to obtain such datasets. In this study, a spatio-temporal vegetation index image fusion model (STVIFM) was developed to generate high spatial resolution Normalized Difference Vegetation Index (NDVI) time-series images with higher accuracy, since most of the existing methods have some limitations in accurately predicting NDVI in heterogeneous regions, or rely on very computationally intensive steps and land cover maps for heterogeneous regions. The STVIFM aims to predict the fine-resolution NDVI through understanding the contribution of each fine-resolution pixel to the total NDVI change, which was calculated from the coarse-resolution images acquired on two dates. On the one hand, it considers the difference in relationships between the fine- and coarse-resolution images on different dates and the difference in NDVI change rates at different growing stages. On the other hand, it neither needs to search similar pixels nor needs to use land cover maps. The Landsat-8 and MODIS data acquired over three test sites with different landscapes were used to test the spatial and temporal performance of the proposed model. Compared with the spatial and temporal adaptive reflectance fusion model (STARFM), enhanced spatial and temporal adaptive reflectance fusion model (ESTARFM) and the flexible spatiotemporal data fusion (FSDAF) method, the proposed STVIFM outperforms the STARFM and ESTARFM at three study sites and different stages when the land cover or NDVI changes were captured by the two pairs of fine- and coarse-resolution images, and it is more robust and less computationally intensive than the FSDAF.
topic spatio-temporal
data fusion
Landsat
MODIS
NDVI
time-series
url https://www.mdpi.com/2072-4292/9/11/1125
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