Počet záznamů: 1  

Mapping of crop types and crop sequences with combined time series of Sentinel-1, Sentinel-2 and Landsat 8 data for Germany

  1. 1.
    0555130 - ÚVGZ 2023 RIV US eng J - Článek v odborném periodiku
    Blickensdoerfer, L. - Schwieder, M. - Pflugmacher, D. - Nendel, Claas - Erasmi, S. - Hostert, P.
    Mapping of crop types and crop sequences with combined time series of Sentinel-1, Sentinel-2 and Landsat 8 data for Germany.
    Remote Sensing of Environment. Roč. 269, FEB (2022), č. článku 112831. ISSN 0034-4257. E-ISSN 1879-0704
    Institucionální podpora: RVO:86652079
    Klíčová slova: remote-sensing data * surface reflectance * estimating area * national-scale * random forest * accuracy * biodiversity * patterns * systems * Agricultural land cover * Analysis-ready data * Time series * Large-area mapping * Optical remote sensing * sar * Big data * Multi-sensor
    Obor OECD: Agriculture
    Impakt faktor: 13.5, rok: 2022
    Způsob publikování: Open access
    https://click.endnote.com/viewer?doi=10.1016%2Fj.rse.2021.112831&token=WzI5NjkzMTIsIjEwLjEwMTYvai5yc2UuMjAyMS4xMTI4MzEiXQ.2ErvxKTgz45sAhAIL8ihIstDfmY

    Monitoring agricultural systems becomes increasingly important in the context of global challenges like climate change, biodiversity loss, population growth, and the rising demand for agricultural products. High-resolution, national-scale maps of agricultural land are needed to develop strategies for future sustainable agriculture. However, the characterization of agricultural land cover over large areas and for multiple years remains challenging due to the locally diverse and temporally variable characteristics of cultivated land. We here propose a workflow for generating national agricultural land cover maps on a yearly basis that accounts for varying environmental conditions. We tested the approach by mapping 24 agricultural land cover classes in Germany for the three years 2017, 2018, and 2019, in which the meteorological conditions strongly differed. We used a random forest classifier and dense time series data from Sentinel-2 and Landsat 8 in combination with monthly Sentinel-1 composites and environmental data and evaluated the relative importance of optical, radar, and environmental data. Our results show high overall accuracy and plausible class accuracies for the most dominant crop types across different years despite the strong inter-annual meteorological variability and the presence of drought and nondrought years. The maps show high spatial consistency and good delineation of field parcels. Combining optical, SAR, and environmental data increased overall accuracies by 6% to 10% compared to single sensor approaches, in which optical data outperformed SAR. Overall accuracy ranged between 78% and 80%, and the mapped areas aligned well with agricultural statistics at the regional and national level. Based on the multi-year dataset we mapped major crop sequences of cereals and leaf crops. Most crop sequences were dominated by winter cereals followed by summer cereals. Monocultures of summer cereals were mainly revealed in the Northwest of Germany. We showcased that high spatial and thematic detail in combination with annual mapping will stimulate research on crop cycles and studies to assess the impact of environmental policies on management decisions. Our results demonstrate the capabilities of integrated optical time series and SAR data in combination with variables describing local and seasonal environmental conditions for annual large-area crop type mapping.
    Trvalý link: http://hdl.handle.net/11104/0330445

     
     
Počet záznamů: 1  

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