Mapping Crop Phenology in Near Real-Time Using Satellite Remote Sensing: Challenges and Opportunities

Crop phenology is critical for agricultural management, crop yield estimation, and agroecosystem assessment. Traditionally, crop growth stages are observed from the ground, which is time-consuming and lacks spatial variability. Remote sensing Vegetation Index (VI) time series has been used to map la...

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Main Authors: Feng Gao, Xiaoyang Zhang
Format: Article
Language:English
Published: American Association for the Advancement of Science (AAAS) 2021-01-01
Series:Journal of Remote Sensing
Online Access:http://dx.doi.org/10.34133/2021/8379391
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spelling doaj-829f4366a5394ab29f8122f61116ca452021-04-25T11:26:35ZengAmerican Association for the Advancement of Science (AAAS)Journal of Remote Sensing2694-15892021-01-01202110.34133/2021/8379391Mapping Crop Phenology in Near Real-Time Using Satellite Remote Sensing: Challenges and OpportunitiesFeng Gao0Xiaoyang Zhang1USDA Agricultural Research Service,Hydrology and Remote Sensing Laboratory,10300 Baltimore Avenue,Beltsville, MD 20705,USAGeospatial Sciences Center of Excellence,Department of Geography and Geospatial Sciences,South Dakota State University,Brookings, SD 57007,USACrop phenology is critical for agricultural management, crop yield estimation, and agroecosystem assessment. Traditionally, crop growth stages are observed from the ground, which is time-consuming and lacks spatial variability. Remote sensing Vegetation Index (VI) time series has been used to map land surface phenology (LSP) and relate to crop growth stages mostly after the growing season. In recent years, high temporal and spatial resolution remote sensing data have allowed near-real-time mapping of crop phenology within the growing season. This paper summarizes two classes of near-real-time mapping methods, i.e., curve-based and trend-based approaches. The curve-based approaches combine the time series VIs and crop growth stages from historical years with the current observations to estimate crop growth stages. The curve-based approaches are capable of a short-term prediction. The trend-based approaches detect upward or downward trends from time series and confirm the trends using the increasing or decreasing momentum and VI thresholds. The trend-based approaches only use current observations. Both curve-based and trend-based approaches are promising in mapping crop growth stages timely. Nevertheless, mapping crop phenology near real-time is challenging since remote sensing observations are not always sensitive to crop growth stages. The accuracy of crop phenology detection depends on the frequency and availability of cloud-free observations within the growing season. Recent satellite datasets such as the harmonized Landsat and Sentinel-2 (HLS) are promising for mapping crop phenology within the season over large areas. Operational applications in the near future are feasible.http://dx.doi.org/10.34133/2021/8379391
collection DOAJ
language English
format Article
sources DOAJ
author Feng Gao
Xiaoyang Zhang
spellingShingle Feng Gao
Xiaoyang Zhang
Mapping Crop Phenology in Near Real-Time Using Satellite Remote Sensing: Challenges and Opportunities
Journal of Remote Sensing
author_facet Feng Gao
Xiaoyang Zhang
author_sort Feng Gao
title Mapping Crop Phenology in Near Real-Time Using Satellite Remote Sensing: Challenges and Opportunities
title_short Mapping Crop Phenology in Near Real-Time Using Satellite Remote Sensing: Challenges and Opportunities
title_full Mapping Crop Phenology in Near Real-Time Using Satellite Remote Sensing: Challenges and Opportunities
title_fullStr Mapping Crop Phenology in Near Real-Time Using Satellite Remote Sensing: Challenges and Opportunities
title_full_unstemmed Mapping Crop Phenology in Near Real-Time Using Satellite Remote Sensing: Challenges and Opportunities
title_sort mapping crop phenology in near real-time using satellite remote sensing: challenges and opportunities
publisher American Association for the Advancement of Science (AAAS)
series Journal of Remote Sensing
issn 2694-1589
publishDate 2021-01-01
description Crop phenology is critical for agricultural management, crop yield estimation, and agroecosystem assessment. Traditionally, crop growth stages are observed from the ground, which is time-consuming and lacks spatial variability. Remote sensing Vegetation Index (VI) time series has been used to map land surface phenology (LSP) and relate to crop growth stages mostly after the growing season. In recent years, high temporal and spatial resolution remote sensing data have allowed near-real-time mapping of crop phenology within the growing season. This paper summarizes two classes of near-real-time mapping methods, i.e., curve-based and trend-based approaches. The curve-based approaches combine the time series VIs and crop growth stages from historical years with the current observations to estimate crop growth stages. The curve-based approaches are capable of a short-term prediction. The trend-based approaches detect upward or downward trends from time series and confirm the trends using the increasing or decreasing momentum and VI thresholds. The trend-based approaches only use current observations. Both curve-based and trend-based approaches are promising in mapping crop growth stages timely. Nevertheless, mapping crop phenology near real-time is challenging since remote sensing observations are not always sensitive to crop growth stages. The accuracy of crop phenology detection depends on the frequency and availability of cloud-free observations within the growing season. Recent satellite datasets such as the harmonized Landsat and Sentinel-2 (HLS) are promising for mapping crop phenology within the season over large areas. Operational applications in the near future are feasible.
url http://dx.doi.org/10.34133/2021/8379391
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