首页> 外文会议>IEEE International Geoscience and Remote Sensing Symposium >LAND MANAGEMENT MONITORING OF NEAR-NATURAL AREAS THROUGH AN INTEGRATED ANALYSIS OF MULTI-TEMPORAL SATELLITE DATA IN A MODEL FRAMEWORK
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LAND MANAGEMENT MONITORING OF NEAR-NATURAL AREAS THROUGH AN INTEGRATED ANALYSIS OF MULTI-TEMPORAL SATELLITE DATA IN A MODEL FRAMEWORK

机译:通过综合分析模型框架中的多时间卫星数据综合分析,对近自然区域的土地管理监测

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A method to derive products for a sustainable management of the land surface is developed in the frame of the M~4Land project ("Model based, Multi-temporal, Multi-scale and Multi-sensoral retrieval of continuous land management information"). The system relies on a model-supervised dynamic classification of land cover from multi-temporal satellite data that works automatically without the need for training data or manual data processing. This approach is tested for the first time in a mesoscale setting (300m resolution). The performed model-supervised land cover classification of ENVISAT MERIS data at a test site in Southern Germany in 2010 is promising with an overall accuracy of 84.7%. After the consolidation of the method on this scale further land management products can be developed that are based on the underlying land surface model data.
机译:在M〜4LANG项目(“基于模型,多级,连续土地管理信息”)的框架中,开发了一种衍生土地表面可持续管理产品的方法。该系统依赖于来自多时间卫星数据的模型监督的陆地覆盖的动态分类,这些数据在无需培训数据或手动数据处理的情况下自动工作。在Messcale设置(300M分辨率)中首次测试此方法。 2010年德国南部考试现场的Envisat Meris数据的执行的模型监督土地覆盖了分类,其总体准确性为84.7%。在整合该规模的方法之后,可以开发基于底层陆地模型数据的土地管理产品。

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