Consistency of vegetation index seasonality across the Amazon rainforest
Consistency of vegetation index seasonality across the Amazon rainforest
Vegetation indices (VIs) calculated from remotely sensed reflectance are widely used tools for characterizing the extent and status of vegetated areas. Recently, however, their capability to monitor the Amazon forest phenology has been intensely scrutinized. In this study, we analyze the consistency of VIs seasonal patterns obtained from two MODIS products: the Collection 5 BRDF product (MCD43) and the Multi-Angle Implementation of Atmospheric Correction algorithm (MAIAC). The spatio-temporal patterns of the VIs were also compared with field measured leaf litterfall, gross ecosystem productivity and active microwave data. Our results show that significant seasonal patterns are observed in all VIs after the removal of view-illumination effects and cloud contamination. However, we demonstrate inconsistencies in the characteristics of seasonal patterns between different VIs and MODIS products. We demonstrate that differences in the original reflectance band values form a major source of discrepancy between MODIS VI products. The MAIAC atmospheric correction algorithm significantly reduces noise signals in the red and blue bands. Another important source of discrepancy is caused by differences in the availability of clear-sky data, as the MAIAC product allows increased availability of valid pixels in the equatorial Amazon. Finally, differences in VIs seasonal patterns were also caused by MODIS collection 5 calibration degradation. The correlation of remote sensing and field data also varied spatially, leading to different temporal offsets between VIs, active microwave and field measured data. We conclude that recent improvements in the MAIAC product have led to changes in the characteristics of spatio-temporal patterns of VIs seasonality across the Amazon forest, when compared to the MCD43 product. Nevertheless, despite improved quality and reduced uncertainties in the MAIAC product, a robust biophysical interpretation of VIs seasonality is still missing.
42-53
Maeda, Eduardo
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Moura, Yhasmin
70bf6587-8b49-422f-ad39-f85498568708
Wagner, Fabien
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Hilker, Thomas
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Lyapustin, Alexei
49921e95-158c-446e-bddc-e49a17320c27
Wang, Yujie
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Chave, Jérôme
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Mõttus, Matti
02828cdb-933e-472a-a9bc-c459ae278e94
Aragão, Luiz
6bbb6e02-300c-40ef-b5c7-37919cb66006
Shimabukuro, Yosio
1645f0af-c4cc-4f22-9510-9e7d5e117491
October 2016
Maeda, Eduardo
64ddfa58-7f29-4af5-8656-acb530d3b712
Moura, Yhasmin
70bf6587-8b49-422f-ad39-f85498568708
Wagner, Fabien
4ce1f00e-6e5f-46b9-b25e-2543e36f0796
Hilker, Thomas
c7fb75b8-320d-49df-84ba-96c9ee523d40
Lyapustin, Alexei
49921e95-158c-446e-bddc-e49a17320c27
Wang, Yujie
6915380d-4c23-4fef-a172-6880ddeff699
Chave, Jérôme
73dae868-3a1b-4380-8873-1ca1923f3b35
Mõttus, Matti
02828cdb-933e-472a-a9bc-c459ae278e94
Aragão, Luiz
6bbb6e02-300c-40ef-b5c7-37919cb66006
Shimabukuro, Yosio
1645f0af-c4cc-4f22-9510-9e7d5e117491
Maeda, Eduardo, Moura, Yhasmin, Wagner, Fabien, Hilker, Thomas, Lyapustin, Alexei, Wang, Yujie, Chave, Jérôme, Mõttus, Matti, Aragão, Luiz and Shimabukuro, Yosio
(2016)
Consistency of vegetation index seasonality across the Amazon rainforest.
International Journal of Applied Earth Observation and Geoinformation, 52, .
(doi:10.1016/j.jag.2016.05.005).
Abstract
Vegetation indices (VIs) calculated from remotely sensed reflectance are widely used tools for characterizing the extent and status of vegetated areas. Recently, however, their capability to monitor the Amazon forest phenology has been intensely scrutinized. In this study, we analyze the consistency of VIs seasonal patterns obtained from two MODIS products: the Collection 5 BRDF product (MCD43) and the Multi-Angle Implementation of Atmospheric Correction algorithm (MAIAC). The spatio-temporal patterns of the VIs were also compared with field measured leaf litterfall, gross ecosystem productivity and active microwave data. Our results show that significant seasonal patterns are observed in all VIs after the removal of view-illumination effects and cloud contamination. However, we demonstrate inconsistencies in the characteristics of seasonal patterns between different VIs and MODIS products. We demonstrate that differences in the original reflectance band values form a major source of discrepancy between MODIS VI products. The MAIAC atmospheric correction algorithm significantly reduces noise signals in the red and blue bands. Another important source of discrepancy is caused by differences in the availability of clear-sky data, as the MAIAC product allows increased availability of valid pixels in the equatorial Amazon. Finally, differences in VIs seasonal patterns were also caused by MODIS collection 5 calibration degradation. The correlation of remote sensing and field data also varied spatially, leading to different temporal offsets between VIs, active microwave and field measured data. We conclude that recent improvements in the MAIAC product have led to changes in the characteristics of spatio-temporal patterns of VIs seasonality across the Amazon forest, when compared to the MCD43 product. Nevertheless, despite improved quality and reduced uncertainties in the MAIAC product, a robust biophysical interpretation of VIs seasonality is still missing.
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Accepted/In Press date: 23 May 2016
e-pub ahead of print date: 9 June 2016
Published date: October 2016
Organisations:
Earth Surface Dynamics
Identifiers
Local EPrints ID: 393920
URI: http://eprints.soton.ac.uk/id/eprint/393920
ISSN: 0303-2434
PURE UUID: 6cda0527-7e26-4527-be6c-e169f3797db8
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Date deposited: 07 Jul 2016 08:20
Last modified: 15 Mar 2024 00:13
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Author:
Eduardo Maeda
Author:
Yhasmin Moura
Author:
Fabien Wagner
Author:
Thomas Hilker
Author:
Alexei Lyapustin
Author:
Yujie Wang
Author:
Jérôme Chave
Author:
Matti Mõttus
Author:
Luiz Aragão
Author:
Yosio Shimabukuro
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