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EO data for Rice monitoring in Asia Thuy Le Toan CESBIO, Toulouse, France & The Asia-RICE team
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G20 GEOGLAM Goal: To strengthen the international community’s capacity to produce and disseminate relevant, timely and accurate forecasts of agricultural production at national, regional and global scales through reinforced use of EO
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Information/ Products For Asia-RICE Information and Product Types Area estimate
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Information/ Products EO Data Products For Asia-RICE Information and Product Types Area estimate Cropland mask Rice grown area
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Information/ Products Production estimate - Crop outlook / Early warning/ Damage - Yield forecast Agricultural practices Crop condition indicators Biophysical variables Environmental variables (soil moisture) Weather EO Data Products For Asia-RICE Information and Product Types Area estimate Cropland mask Rice grown area
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Earth Observation data for rice monitoring 2013-2014 Rice grown area estimates and mapping
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SPOT Vegetation Wheat Rice Monitoring at global scale: MODIS & SPOT VGT
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Xiao et al, 2006 Flooding Need to use LSWI (Land Surface Water Index or Normalised Difference Water Index) to discriminate rice from other vegetation before using NDVI to monitor rice activity LSWI=SWIR-NIR/ SWIR+NIR NDVI=NIR-R/NIR+R Monitoring at global scale: MODIS & SPOT VGT
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Rice grown areas at national scale using MODIS. Comparison with National Statistics (Xiao et al., 2006) Can we use MODIS for rice grown area estimate ?
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Various results obtained. Better at global and multi- year average than at local-provincial scales. Sources of error are among others: - resolution of MODIS vs small field size and non uniform rice crop calendar - confusion with other crop (specially id direct sowing) - cloud contamination.. Major advantages: data widey available and methods accessible by users
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Can we use SAR data for rice grown area estimate? Relevance of SAR data to monitor land surfaces in frequently cloud covered regions Studies show the relevance of C, L, X band data to map rice grown area Major shortcomings: lack of systematic, widely available (and free of charge) data for operational use lack of simple and available methods accessible by users
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12 SAR data for rice monitoring 2013-2014
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Can we use SAR data for rice grown area estimate? Relevance of SAR data to monitor land surfaces in frequently cloud covered regions Studies show the relevance of C, L, X band data to map rice grown area Major shortcomings: lack of systematic, widely available (and free of charge) data for operational use lack of simple and available methods accessible by users
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Phase 1A of Asia-RiCE will consist of four technical demonstration sites which will focus on developing provincial-level rice crop area estimations. Phase 1B, and/or Phase 2, other technical demonstrators will be added, and/or the scope may be increased to produce whole country estimates. Objectives of Technical Demonstration sites
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VAST: Lam Dao Nguyen, Hoang Phi Phung CESBIO: Thuy Le Toan, Alexandre Bouvet Objective phase 1: –To develop area estimation using all available data in 2013-2014 (SAR and optical) –To compare the results and to define the data type than can be used for the country estimates (for SAR: resolution, mode, frequency, polarisation, acquisition timing.., but also long term availability and cost) South Vietnam demonstration site: An Giang province
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VIETNAM Mekong Delta In 1000 tons Choice of the An Giang province: Increase in the third season rice (Autumn-Winter) made possible by construction of dykes to protect the fields from seasonal floods
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17 Dates of satellite data acquisitions in Autumn-Winter 2013 crop over An Giang: Cosmo-Skymed: 10 dates 19 August, 4 September, 20 September, 6 October, 14 October, 22 October, 30 October, 7 November, 15 November, 23 November Radarsat-2: 4 dates 30 August, 23 September, 17 October, 10 November TerraSAR-X: 3 dates 25 September, 17 October, 28 October 2013
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Scattering on leaves, ears Attenuated ground scattering Stem-ground interaction For the diversity of SAR data, method development needs to be based on knowledge of scattering physics 18
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The relative contributions of volume, surface and volume-surface(interaction) scattering depend on rice growth stage, radar frequency, incidence angle and polarisation Rice backscatter model Example at X-band Le Toan et al, 1989
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Examples of measurements at X-band Inoue et al., 2004 25° of incidence 55° of incidence
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20/09/2013 R: HH G:HH/VV B: VV CosmoSkymed data
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Cosmo-Skymed HH 19 August 2013
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Cosmo-Skymed HH 4 September 2013
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Cosmo-Skymed HH 20September 2013 Use of backscatter temporal variation to distinguish rice
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Polarization HH COSMO-SKYMED data 19 August 2013 Use of polarization (HH and VV) to distinguish rice from other land use types Polarization VV
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Polarisation ratio 19 August 2013 Developed rice plants HH/VV
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Polarisation ratio 4 Sept ember 2013
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Polarisation ratio 20 Sept ember 2013
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VV 19 August, 4 Sept, 20 Sept Details of rice fields structure
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Rice varieties - 50404 (circle) - OM4218 (square) - Jasmine (+) - 7347 (losange) unknown (x) 19 08 2013 04 09 2013 20 09 2013 06 10 2013 14 10 2013 Temporal variation of the backscatter
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19 08 2013 04 09 2013 20 09 2013 06 10 2013 14 10 2013 Temporal variation of the backscatter
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19 08 2013 04 09 2013 20 09 2013 06 10 2013 14 10 2013 HH/VV Ratio Temporal variation of the backscatter
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19 08 2013 04 09 2013 20 09 2013 14 10 2013 06 10 2013 Temporal variation of the backscatter
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30 cm 10 cm Angle : 50°-55° 70cm tillering 2-3 leaves 30 cm 70 cm stem extension An Giang, Aug-Oct 2013 CosmoSkymed, X band SAR Camargue, 1988 X band airborne SAR Different experiments, same scattering physics
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Autumn-Winter rice map as of October 14 2013 Châu Thành Thoại Sơn TP Long Xuyên Chợ Mới Châu Phú Use of robust indicators for rice mapping
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36 AW 2007 crop from ASAR APP AW 2010 crop from ASAR APP AW 2013 crop from CSK PP (14/10/2013)
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1.Development rates: require weather and phenological observations: sowing date, emergence time, tillering, heading, flowering, maturity 2. Output of the model to be adjusted with measurements: -LAI, Biomass of stems, leaves, panicles At least at 6 sampling times (provided if possible by EO) - Transplanting - Maximum tillering - Panicle initiation - Flowering - Grain filling - Maturity Requirements for rice gowth model
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24-31 Jul 1-7 Aug 8-14 Aug 15-21 Aug 22-28 Aug 29 Aug - 4 Sep 5-14 Sep Estimated sowing date Estimated sowing date from CSK SAR data
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RMSE=4,1 days Sowing date +/- 3 days Assessment of sowing date estimate Date from August to Sept 2013
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SUMMARY For Rice monitoring in Asia, various EO data sources exist Works are to be done to combine different data sources for rice grown area esimates (low resolution optical, narrow/large swath SAR data, sampling strategies..) For Rice yield estimates, research effort is still needed There is a need to assess the methods not only at a single site, but across Asia There is an action to be undertaken by Asia-RICE /GEOGLAM for future data acquisition for Rice (e.g.towards Sentinel-1 and ALOS-2)
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