Marie Parrens
ASM Clermont Auvergne
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Publication
Featured researches published by Marie Parrens.
Remote Sensing | 2015
Shu Wang; Jean-Pierre Wigneron; Lingmei Jiang; Marie Parrens; Xiao-Yong Yu; Amen Al-Yaari; Qin-Yu Ye; R. Fernandez-Moran; Wei Ji; Yann Kerr
Quantifying roughness effects on ground surface emissivity is an important step in obtaining high-quality soil moisture products from large-scale passive microwave sensors. In this study, we used a semi-empirical method to evaluate roughness effects (parameterized here by the parameter) on a global scale from AMSR-E (Advanced Microwave Scanning Radiometer for EOS) observations. AMSR-E brightness temperatures at 6.9 GHz obtained from January 2009 to September 2011, together with estimations of soil moisture from the SMOS (Soil Moisture and Ocean Salinity) L3 products and of soil temperature from ECMWF’s (European Centre for Medium-range Weather Forecasting) were used as inputs in a retrieval process. In the first step, we retrieved a parameter (referred to as the parameter) accounting for the combined effects of roughness and vegetation. Then, global MODIS NDVI data were used to decouple the effects of vegetation from those of surface roughness. Finally, global maps of the Hr parameters were produced and discussed. Initial results showed that some spatial patterns in the values could be associated with the main vegetation types (higher values of were retrieved generally in forested regions, intermediate values were obtained over crops and grasslands, and lower values were obtained over shrubs and desert) and topography. For instance, over the USA, lower values of were retrieved in relatively flat regions while relatively higher values were retrieved in hilly regions.
international geoscience and remote sensing symposium | 2014
Marie Parrens; Jean-Pierre Wigneron; Philippe Richaume; Yann Kerr; S. Wang; A. Al-Yaari; R. Fernandez-Moran; Arnaud Mialon; Maria José Escorihuela; Jennifer P. Grant
The Soil Moisture and Ocean Salinity (SMOS) mission is the first satellite dedicated to providing global surface soil moisture (SM). SMOS operates at L-band and at this frequency, the signal depends on soil moisture but is also significantly affected by surface soil roughness. Using the Combined soil Roughness & Vegetation Effects (CRVE) method detailed in this paper, the effect of vegetation and soil roughness can be combined using a single parameter, referred to as TR here. SM and TR were retrieved by inverting the SMOS observations using the forward emission model (L-MEB). Assuming a linear relationship between TR and LAI obtained by the MODIS data, an Australian map of soil roughness was computed. This map could lead to improved soil moisture retrievals for present and future microwave remote sensing missions such as SMOS and the Soil Moisture Active Passive (SMAP) scheduled for launch in November 2014.
international geoscience and remote sensing symposium | 2017
Yann Kerr; Jean-Pierre Wigneron; Ali Mahmoodi; Ahmad Al Bitar; Arnaud Mialon; Simone Bircher; Beatriz Molero; Philippe Richaume; Francois Cabot; Nemesio Rodriguez-Fernandez; Marie Parrens; Amen Al-Yaari; Roberto Fernandez
The Soil Moisture and Ocean Salinity mission has been collecting data for over 7 years. The whole data set has been reprocessed (Version 620 for levels 1 and 2 and version 3 for level 3 CATDS) an used to see trends and finalise potential applications. This ESA led mission for Earth Observation is dedicated to provide soil moisture over continental surfaces (with an accuracy goal of 0.04 m3/m3), vegetation water content over land, and ocean salinity. After 7 years it seems important to start using data for having a look at anomalies and see how they can relate to large scale events. Also we now have access the Soil Moisture Active and Passive (SMAP) mission and there are obvious synergisms to infer.
international geoscience and remote sensing symposium | 2016
Yann Kerr; Ali Mahmoodi; Ahmad Al Bitar; Arnaud Mialon; Simone Bircher; Beatriz Molero; Philippe Richaume; Francois Cabot; Nemesio Rodriguez-Fernandez; Marie Parrens; Amen Al-Yaari; Jean-Pierre Wigneron
The Soil Moisture and Ocean Salinity mission has been collecting data for 6 years. The whole data set has just been reprocessed (Version 620 for levels 1 and 2 and version 3 for level 3 CATDS). This ESA led mission for Earth Observation is dedicated to provide soil moisture over continental surfaces (with an accuracy goal of 0.04 m3/m3), vegetation water content over land, and ocean salinity. After 6 years it seems important to start using data for having a look at anomalies and see how they can relate to large scale events.
Hydrology and Earth System Sciences | 2011
Marie Parrens; Elena Zakharova; S. Lafont; Jean-Christophe Calvet; Yann Kerr; W. Wagner; Jean-Pierre Wigneron
Hydrology and Earth System Sciences Discussions | 2013
Marie Parrens; J.-F. Mahfouf; A. L. Barbu; Jean-Christophe Calvet
Remote Sensing of Environment | 2016
Marie Parrens; Jean-Pierre Wigneron; Philippe Richaume; Arnaud Mialon; Ahmad Al Bitar; R. Fernandez-Moran; Amen Al-Yaari; Yann Kerr
Remote Sensing of Environment | 2014
Marie Parrens; Jean-Christophe Calvet; Patricia de Rosnay
Water | 2017
Marie Parrens; Ahmad Al Bitar; Frédéric Frappart; Fabrice Papa; Stéphane Calmant; Jean-François Crétaux; Jean-Pierre Wigneron; Yann Kerr
Remote Sensing of Environment | 2017
Wigneron J.-P.; Thomas J. Jackson; Peggy O’Neill; G. J. M. De Lannoy; P. de Rosnay; Jeffrey P. Walker; Paolo Ferrazzoli; Valery L. Mironov; Simone Bircher; Jennifer Grant; M. Kurum; Mike Schwank; J. Muñoz-Sabater; Narendra N. Das; Alain Royer; A. Al-Yaari; A. Al Bitar; R. Fernandez-Moran; Heather Lawrence; Arnaud Mialon; Marie Parrens; P. Richaume; Steven Delwart; Yann Kerr