The forgotten land use class: Mapping of fallow fields across the Sahel using Sentinel-2

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The forgotten land use class : Mapping of fallow fields across the Sahel using Sentinel-2. / Tong, Xiaoye; Brandt, Martin; Hiernaux, Pierre; Herrmann, Stefanie; Rasmussen, Laura Vang; Rasmussen, Kjeld; Tian, Feng; Tagesson, Torbern; Zhang, Wenmin; Fensholt, Rasmus.

I: Remote Sensing of Environment, Bind 239, 111598, 2020.

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Harvard

Tong, X, Brandt, M, Hiernaux, P, Herrmann, S, Rasmussen, LV, Rasmussen, K, Tian, F, Tagesson, T, Zhang, W & Fensholt, R 2020, 'The forgotten land use class: Mapping of fallow fields across the Sahel using Sentinel-2', Remote Sensing of Environment, bind 239, 111598. https://doi.org/10.1016/j.rse.2019.111598

APA

Tong, X., Brandt, M., Hiernaux, P., Herrmann, S., Rasmussen, L. V., Rasmussen, K., Tian, F., Tagesson, T., Zhang, W., & Fensholt, R. (2020). The forgotten land use class: Mapping of fallow fields across the Sahel using Sentinel-2. Remote Sensing of Environment, 239, [111598]. https://doi.org/10.1016/j.rse.2019.111598

Vancouver

Tong X, Brandt M, Hiernaux P, Herrmann S, Rasmussen LV, Rasmussen K o.a. The forgotten land use class: Mapping of fallow fields across the Sahel using Sentinel-2. Remote Sensing of Environment. 2020;239. 111598. https://doi.org/10.1016/j.rse.2019.111598

Author

Tong, Xiaoye ; Brandt, Martin ; Hiernaux, Pierre ; Herrmann, Stefanie ; Rasmussen, Laura Vang ; Rasmussen, Kjeld ; Tian, Feng ; Tagesson, Torbern ; Zhang, Wenmin ; Fensholt, Rasmus. / The forgotten land use class : Mapping of fallow fields across the Sahel using Sentinel-2. I: Remote Sensing of Environment. 2020 ; Bind 239.

Bibtex

@article{c4e296ce97e5400f88901eae4aebc040,
title = "The forgotten land use class: Mapping of fallow fields across the Sahel using Sentinel-2",
abstract = "Remote sensing-derived cropland products have depicted the location and extent of agricultural lands with an ever increasing accuracy. However, limited attention has been devoted to distinguishing between actively cropped fields and fallowed fields within agricultural lands, and in particular so in grass fallow systems of semi-arid areas. In the Sahel, one of the largest dryland regions worldwide, crop-fallow rotation practices are widely used for soil fertility regeneration. Yet, little is known about the extent of fallow fields since fallow is not explicitly differentiated within the cropland class in any existing remote sensing-based land use/cover maps, regardless of the spatial scale. With a 10 m spatial resolution and a 5-day revisit frequency, Sentinel-2 satellite imagery made it possible to disentangle agricultural land into cropped and fallow fields, facilitated by Google Earth Engine (GEE) for big data handling. Here we produce the first Sahelian fallow field map at a 10 m resolution for the baseline year 2017, accomplished by designing a remote sensing driven protocol for generating reference data for mapping over large areas. Based on the 2015 Copernicus Dynamic Land Cover map at 100 m resolution, the extent of fallow fields in the cropland class is estimated to be 63% (403,617 km2) for the Sahel in 2017. Similar results are obtained for five contemporary cropland products, with fallow fields occupying 57–62% of the cropland area. Yet, it is noted that the total estimated area coverage depends on the quality of the different cropland products. The share of cropped fields within the Copernicus cropland area is found to be higher in the arid regions (200–300 mm rainfall) as compared to the semi-arid regions (300–600 mm rainfall). The woody cover fraction within cropped and fallow fields is found to have a reversed pattern between arid (higher woody cover in cropped fields) and semi-arid (higher woody cover in fallow fields) regions. The method developed, using cloud-based Earth Observation (EO) data and computation on the GEE platform, is expected to be reproducible for mapping the extent of fallow fields across global croplands. Future applications based on multi-year time series is expected to improve our understanding of crop-fallow rotation dynamics in grass fallow systems being key in teasing apart how cropland intensification and expansion affect environmental variables, such as soil fertility, crop yields and local livelihoods in low-income regions such as the Sahel. The mapping result can be visualized via a web viewer (https://buwuyou.users.earthengine.app/view/fallowinsahel).",
keywords = "Cropland, Drylands, Fallow fields, Land use/cover mapping, Sahel, Satellite image time series, Sentinel-2",
author = "Xiaoye Tong and Martin Brandt and Pierre Hiernaux and Stefanie Herrmann and Rasmussen, {Laura Vang} and Kjeld Rasmussen and Feng Tian and Torbern Tagesson and Wenmin Zhang and Rasmus Fensholt",
year = "2020",
doi = "10.1016/j.rse.2019.111598",
language = "English",
volume = "239",
journal = "Remote Sensing of Environment",
issn = "0034-4257",
publisher = "Elsevier",

}

RIS

TY - JOUR

T1 - The forgotten land use class

T2 - Mapping of fallow fields across the Sahel using Sentinel-2

AU - Tong, Xiaoye

AU - Brandt, Martin

AU - Hiernaux, Pierre

AU - Herrmann, Stefanie

AU - Rasmussen, Laura Vang

AU - Rasmussen, Kjeld

AU - Tian, Feng

AU - Tagesson, Torbern

AU - Zhang, Wenmin

AU - Fensholt, Rasmus

PY - 2020

Y1 - 2020

N2 - Remote sensing-derived cropland products have depicted the location and extent of agricultural lands with an ever increasing accuracy. However, limited attention has been devoted to distinguishing between actively cropped fields and fallowed fields within agricultural lands, and in particular so in grass fallow systems of semi-arid areas. In the Sahel, one of the largest dryland regions worldwide, crop-fallow rotation practices are widely used for soil fertility regeneration. Yet, little is known about the extent of fallow fields since fallow is not explicitly differentiated within the cropland class in any existing remote sensing-based land use/cover maps, regardless of the spatial scale. With a 10 m spatial resolution and a 5-day revisit frequency, Sentinel-2 satellite imagery made it possible to disentangle agricultural land into cropped and fallow fields, facilitated by Google Earth Engine (GEE) for big data handling. Here we produce the first Sahelian fallow field map at a 10 m resolution for the baseline year 2017, accomplished by designing a remote sensing driven protocol for generating reference data for mapping over large areas. Based on the 2015 Copernicus Dynamic Land Cover map at 100 m resolution, the extent of fallow fields in the cropland class is estimated to be 63% (403,617 km2) for the Sahel in 2017. Similar results are obtained for five contemporary cropland products, with fallow fields occupying 57–62% of the cropland area. Yet, it is noted that the total estimated area coverage depends on the quality of the different cropland products. The share of cropped fields within the Copernicus cropland area is found to be higher in the arid regions (200–300 mm rainfall) as compared to the semi-arid regions (300–600 mm rainfall). The woody cover fraction within cropped and fallow fields is found to have a reversed pattern between arid (higher woody cover in cropped fields) and semi-arid (higher woody cover in fallow fields) regions. The method developed, using cloud-based Earth Observation (EO) data and computation on the GEE platform, is expected to be reproducible for mapping the extent of fallow fields across global croplands. Future applications based on multi-year time series is expected to improve our understanding of crop-fallow rotation dynamics in grass fallow systems being key in teasing apart how cropland intensification and expansion affect environmental variables, such as soil fertility, crop yields and local livelihoods in low-income regions such as the Sahel. The mapping result can be visualized via a web viewer (https://buwuyou.users.earthengine.app/view/fallowinsahel).

AB - Remote sensing-derived cropland products have depicted the location and extent of agricultural lands with an ever increasing accuracy. However, limited attention has been devoted to distinguishing between actively cropped fields and fallowed fields within agricultural lands, and in particular so in grass fallow systems of semi-arid areas. In the Sahel, one of the largest dryland regions worldwide, crop-fallow rotation practices are widely used for soil fertility regeneration. Yet, little is known about the extent of fallow fields since fallow is not explicitly differentiated within the cropland class in any existing remote sensing-based land use/cover maps, regardless of the spatial scale. With a 10 m spatial resolution and a 5-day revisit frequency, Sentinel-2 satellite imagery made it possible to disentangle agricultural land into cropped and fallow fields, facilitated by Google Earth Engine (GEE) for big data handling. Here we produce the first Sahelian fallow field map at a 10 m resolution for the baseline year 2017, accomplished by designing a remote sensing driven protocol for generating reference data for mapping over large areas. Based on the 2015 Copernicus Dynamic Land Cover map at 100 m resolution, the extent of fallow fields in the cropland class is estimated to be 63% (403,617 km2) for the Sahel in 2017. Similar results are obtained for five contemporary cropland products, with fallow fields occupying 57–62% of the cropland area. Yet, it is noted that the total estimated area coverage depends on the quality of the different cropland products. The share of cropped fields within the Copernicus cropland area is found to be higher in the arid regions (200–300 mm rainfall) as compared to the semi-arid regions (300–600 mm rainfall). The woody cover fraction within cropped and fallow fields is found to have a reversed pattern between arid (higher woody cover in cropped fields) and semi-arid (higher woody cover in fallow fields) regions. The method developed, using cloud-based Earth Observation (EO) data and computation on the GEE platform, is expected to be reproducible for mapping the extent of fallow fields across global croplands. Future applications based on multi-year time series is expected to improve our understanding of crop-fallow rotation dynamics in grass fallow systems being key in teasing apart how cropland intensification and expansion affect environmental variables, such as soil fertility, crop yields and local livelihoods in low-income regions such as the Sahel. The mapping result can be visualized via a web viewer (https://buwuyou.users.earthengine.app/view/fallowinsahel).

KW - Cropland

KW - Drylands

KW - Fallow fields

KW - Land use/cover mapping

KW - Sahel

KW - Satellite image time series

KW - Sentinel-2

U2 - 10.1016/j.rse.2019.111598

DO - 10.1016/j.rse.2019.111598

M3 - Journal article

AN - SCOPUS:85076860100

VL - 239

JO - Remote Sensing of Environment

JF - Remote Sensing of Environment

SN - 0034-4257

M1 - 111598

ER -

ID: 235154916