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Varying-time random effects models for longitudinal data: unmixing and temporal interpolation of remote-sensing data
Authors:Hervé Cardot  Philippe Maisongrande  Robert Faivre
Institution:1. Institut de Mathématiques, Université de Bourgogne, UMR CNRS , Dijon , France;2. Centre D'Etudes Spatiales de la Biosphère, UMR CNES-CNRS , Toulouse , France;3. INRA Toulouse, Unité Biométrie et Intelligence Artificielle, Castanet-Tolosan , Cedex , France
Abstract:Remote sensing is a helpful tool for crop monitoring or vegetation-growth estimation at a country or regional scale. However, satellite images generally have to cope with a compromise between the time frequency of observations and their resolution (i.e. pixel size). When concerned with high temporal resolution, we have to work with information on the basis of kilometric pixels, named mixed pixels, that represent aggregated responses of multiple land cover. Disaggreggation or unmixing is then necessary to downscale from the square kilometer to the local dynamic of each theme (crop, wood, meadows, etc.).

Assuming the land use is known, that is to say the proportion of each theme within each mixed pixel, we propose to address the downscaling issue through the generalization of varying-time regression models for longitudinal data and/or functional data by introducing random individual effects. The estimators are built by expanding the mixed pixels trajectories with B-splines functions and maximizing the log-likelihood with a backfitting-ECME algorithm. A BLUP formula allows then to get the ‘best possible’ estimations of the local temporal responses of each crop when observing mixed pixels trajectories. We show that this model has many potential applications in remote sensing, and an interesting one consists of coupling high and low spatial resolution images in order to perform temporal interpolation of high spatial resolution images (20 m), increasing the knowledge on particular crops in very precise locations.

The unmixing and temporal high-resolution interpolation approaches are illustrated on remote-sensing data obtained on the South-Western France during the year 2002.

Keywords:backfitting  BLUP  covariance function  downscaling  ECME  functional data  mixed effects  mixed pixels  splines  SPOT/VGT  SPOT/HRVIR  remote sensing
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