Phenotyping conservation agriculture management effects on ground and aerial remote sensing assessments of maize hybrids performance in Zimbabwe

In the coming decades, Sub-Saharan Africa (SSA) faces challenges to sustainably increase food production while keeping pace with continued population growth. Conservation agriculture (CA) has been proposed to enhance soil health and productivity to respond to this situation. Maize is the main staple food in SSA. To increase maize yields, the selection of suitable genotypes and management practices for CA conditions has been explored using remote sensing tools. They may play a fundamental role towards overcoming the traditional limitations of data collection and processing in large scale phenotyping studies. We present the result of a study in which Red-Green-Blue (RGB) and multispectral indexes were evaluated for assessing maize performance under conventional ploughing (CP) and CA practices. Eight hybrids under different planting densities and tillage practices were tested. The measurements were conducted on seedlings at ground level (0.8 m) and from an unmanned aerial vehicle (UAV) platform (30 m), causing a platform proximity effect on the images resolution that did not have any negative impact on the performance of the indexes. Most of the calculated indexes (Green Area (GA) and Normalized Difference Vegetation Index (NDVI)) were significantly affected by tillage conditions increasing their values from CP to CA. Indexes derived from the RGB-images related to canopy greenness performed better at assessing yield differences, potentially due to the greater resolution of the RGB compared with the multispectral data, although this performance was more precise for CP than CA. The correlations of the multispectral indexes with yield were improved by applying a soil-mask derived from a NDVI threshold with the aim of corresponding pixels with vegetation. The results of this study highlight the applicability of remote sensing approaches based on RGB images to the assessment of crop performance and hybrid choice.

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Main Authors: Gracia-Romero, A., Vergara Diaz, O., Thierfelder, C., Cairns, J.E., Kefauver, S.C., Araus, J.L.
Format: Article biblioteca
Language:English
Published: MDPI 2018
Subjects:AGRICULTURAL SCIENCES AND BIOTECHNOLOGY, UAV, RGB, Multispectral, MAIZE, REMOTE SENSING, MULTISPECTRAL IMAGERY, CONSERVATION AGRICULTURE, AERIAL SURVEYING,
Online Access:https://hdl.handle.net/10883/19468
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spelling dig-cimmyt-10883-194682023-12-01T17:01:35Z Phenotyping conservation agriculture management effects on ground and aerial remote sensing assessments of maize hybrids performance in Zimbabwe Gracia-Romero, A. Vergara Diaz, O. Thierfelder, C. Cairns, J.E. Kefauver, S.C. Araus, J.L. AGRICULTURAL SCIENCES AND BIOTECHNOLOGY UAV RGB Multispectral MAIZE REMOTE SENSING MULTISPECTRAL IMAGERY CONSERVATION AGRICULTURE AERIAL SURVEYING In the coming decades, Sub-Saharan Africa (SSA) faces challenges to sustainably increase food production while keeping pace with continued population growth. Conservation agriculture (CA) has been proposed to enhance soil health and productivity to respond to this situation. Maize is the main staple food in SSA. To increase maize yields, the selection of suitable genotypes and management practices for CA conditions has been explored using remote sensing tools. They may play a fundamental role towards overcoming the traditional limitations of data collection and processing in large scale phenotyping studies. We present the result of a study in which Red-Green-Blue (RGB) and multispectral indexes were evaluated for assessing maize performance under conventional ploughing (CP) and CA practices. Eight hybrids under different planting densities and tillage practices were tested. The measurements were conducted on seedlings at ground level (0.8 m) and from an unmanned aerial vehicle (UAV) platform (30 m), causing a platform proximity effect on the images resolution that did not have any negative impact on the performance of the indexes. Most of the calculated indexes (Green Area (GA) and Normalized Difference Vegetation Index (NDVI)) were significantly affected by tillage conditions increasing their values from CP to CA. Indexes derived from the RGB-images related to canopy greenness performed better at assessing yield differences, potentially due to the greater resolution of the RGB compared with the multispectral data, although this performance was more precise for CP than CA. The correlations of the multispectral indexes with yield were improved by applying a soil-mask derived from a NDVI threshold with the aim of corresponding pixels with vegetation. The results of this study highlight the applicability of remote sensing approaches based on RGB images to the assessment of crop performance and hybrid choice. 2018-05-22T21:31:21Z 2018-05-22T21:31:21Z 2018 Article 2072-4292 https://hdl.handle.net/10883/19468 10.3390/rs10020349 English https://www.mdpi.com/2072-4292/10/2/349/s1 CIMMYT manages Intellectual Assets as International Public Goods. The user is free to download, print, store and share this work. In case you want to translate or create any other derivative work and share or distribute such translation/derivative work, please contact CIMMYT-Knowledge-Center@cgiar.org indicating the work you want to use and the kind of use you intend; CIMMYT will contact you with the suitable license for that purpose. Open Access PDF SUB-SAHARAN AFRICA Zimbabwe Basel, Switzerland MDPI 2 10 Remote Sensing
institution CIMMYT
collection DSpace
country México
countrycode MX
component Bibliográfico
access En linea
databasecode dig-cimmyt
tag biblioteca
region America del Norte
libraryname CIMMYT Library
language English
topic AGRICULTURAL SCIENCES AND BIOTECHNOLOGY
UAV
RGB
Multispectral
MAIZE
REMOTE SENSING
MULTISPECTRAL IMAGERY
CONSERVATION AGRICULTURE
AERIAL SURVEYING
AGRICULTURAL SCIENCES AND BIOTECHNOLOGY
UAV
RGB
Multispectral
MAIZE
REMOTE SENSING
MULTISPECTRAL IMAGERY
CONSERVATION AGRICULTURE
AERIAL SURVEYING
spellingShingle AGRICULTURAL SCIENCES AND BIOTECHNOLOGY
UAV
RGB
Multispectral
MAIZE
REMOTE SENSING
MULTISPECTRAL IMAGERY
CONSERVATION AGRICULTURE
AERIAL SURVEYING
AGRICULTURAL SCIENCES AND BIOTECHNOLOGY
UAV
RGB
Multispectral
MAIZE
REMOTE SENSING
MULTISPECTRAL IMAGERY
CONSERVATION AGRICULTURE
AERIAL SURVEYING
Gracia-Romero, A.
Vergara Diaz, O.
Thierfelder, C.
Cairns, J.E.
Kefauver, S.C.
Araus, J.L.
Phenotyping conservation agriculture management effects on ground and aerial remote sensing assessments of maize hybrids performance in Zimbabwe
description In the coming decades, Sub-Saharan Africa (SSA) faces challenges to sustainably increase food production while keeping pace with continued population growth. Conservation agriculture (CA) has been proposed to enhance soil health and productivity to respond to this situation. Maize is the main staple food in SSA. To increase maize yields, the selection of suitable genotypes and management practices for CA conditions has been explored using remote sensing tools. They may play a fundamental role towards overcoming the traditional limitations of data collection and processing in large scale phenotyping studies. We present the result of a study in which Red-Green-Blue (RGB) and multispectral indexes were evaluated for assessing maize performance under conventional ploughing (CP) and CA practices. Eight hybrids under different planting densities and tillage practices were tested. The measurements were conducted on seedlings at ground level (0.8 m) and from an unmanned aerial vehicle (UAV) platform (30 m), causing a platform proximity effect on the images resolution that did not have any negative impact on the performance of the indexes. Most of the calculated indexes (Green Area (GA) and Normalized Difference Vegetation Index (NDVI)) were significantly affected by tillage conditions increasing their values from CP to CA. Indexes derived from the RGB-images related to canopy greenness performed better at assessing yield differences, potentially due to the greater resolution of the RGB compared with the multispectral data, although this performance was more precise for CP than CA. The correlations of the multispectral indexes with yield were improved by applying a soil-mask derived from a NDVI threshold with the aim of corresponding pixels with vegetation. The results of this study highlight the applicability of remote sensing approaches based on RGB images to the assessment of crop performance and hybrid choice.
format Article
topic_facet AGRICULTURAL SCIENCES AND BIOTECHNOLOGY
UAV
RGB
Multispectral
MAIZE
REMOTE SENSING
MULTISPECTRAL IMAGERY
CONSERVATION AGRICULTURE
AERIAL SURVEYING
author Gracia-Romero, A.
Vergara Diaz, O.
Thierfelder, C.
Cairns, J.E.
Kefauver, S.C.
Araus, J.L.
author_facet Gracia-Romero, A.
Vergara Diaz, O.
Thierfelder, C.
Cairns, J.E.
Kefauver, S.C.
Araus, J.L.
author_sort Gracia-Romero, A.
title Phenotyping conservation agriculture management effects on ground and aerial remote sensing assessments of maize hybrids performance in Zimbabwe
title_short Phenotyping conservation agriculture management effects on ground and aerial remote sensing assessments of maize hybrids performance in Zimbabwe
title_full Phenotyping conservation agriculture management effects on ground and aerial remote sensing assessments of maize hybrids performance in Zimbabwe
title_fullStr Phenotyping conservation agriculture management effects on ground and aerial remote sensing assessments of maize hybrids performance in Zimbabwe
title_full_unstemmed Phenotyping conservation agriculture management effects on ground and aerial remote sensing assessments of maize hybrids performance in Zimbabwe
title_sort phenotyping conservation agriculture management effects on ground and aerial remote sensing assessments of maize hybrids performance in zimbabwe
publisher MDPI
publishDate 2018
url https://hdl.handle.net/10883/19468
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