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AUTOMATIC DERIVATION OF FOREST COVER AND FOREST COVER CHANGE USING DENSE MULTI-TEMPORAL TIME SERIES DATA FROM LANDSAT AND SPOT5TAKE5

机译:使用Landsat和Spot5Take5的密度多时间时间序列数据自动推导森林覆盖和森林覆盖变化

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The paper presents a description of the methods development for an automated processing chain for the classification of Forest Cover and Change based on high resolution multi-temporal time series Landsat and SPOT5Take5 data with focus on the dry forest ecosystems of Africa. The method has been developed within the European Space Agency (ESA) funded Global monitoring for Environment and Security Service Element for Forest Monitoring (GSE FM) project on dry forest areas; the demonstration site selected was in Malawi. The methods are based on the principles of a robust, but still flexible monitoring system, to cope with most complex Earth Observation (EO) data scenarios, varying in terms of data quality, source, accuracy, information content, completeness etc. The method allows automated tracking of change dates, data gap filling and takes into account phenology, seasonality of tree species with respect to leaf fall and heavy cloud cover during the rainy season.
机译:本文介绍了对森林覆盖分类和基于高分辨率多时间时间序列Landsat和Spot5Take5数据进行分类的自动化处理链的方法的描述,重点在非洲干旱森林生态系统。该方法已在欧洲航天局(ESA)在干旱林区森林监测(GSE FM)项目中为环境和安全服务元素进行资助全球监测;选择的示范网站是马拉维。这些方法基于强大而仍然灵活的监控系统的原理,以应对最复杂的地球观测(EO)数据场景,在数据质量,来源,准确性,信息内容,完整性等方面变化。方法允许自动跟踪更改日期,数据间隙填充并考虑到缺陷季节的树种季节性,树种的季节性,在雨季期间的叶子和重云覆盖。

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