Remote sensing is a key information source for improving the spatiotemporal understanding of forest ecosystem dynamics. Yet, the mapping and attribution of forest change remains challenging, particularly in areas where a number of interacting disturbance agents simultaneously affect forest development. The forest ecosystems of Central Europe are coupled human and natural systems, with natural and human disturbances affecting forests both individually and in combination. To better understand the complex forest disturbance dynamics in such systems, we utilize 32-year Landsat time series to map forest disturbances in five sites across Austria, the Czech Republic, Germany, Poland, and Slovakia. All sites constituted of a National Park and the s...
Estimates of historical disturbance patterns are essential to guide forest management aimed at ensur...
Dramatic political and economic changes in Eastern European countries following the dissolution of t...
Forests contain a majority of the aboveground carbon (C) found in ecosystems, and understanding biom...
Remote sensing is a key information source for improving the spatiotemporal understanding of forest ...
The attribution of forest disturbances to disturbance agents is a critical challenge for remote sens...
Detailed knowledge of forest cover dynamics is crucial for many applications from resource managemen...
Detailed knowledge of forest cover dynamics is crucial for many applications from resource managemen...
In this study, we characterised the temporal-spectral patterns associated with identifying acute-sev...
In this study, we characterised the temporal-spectral patterns associated with identifying acute-sev...
Forest disturbances are intensifying globally, yet regional drivers of these dynamics remain poorly ...
To the best of our knowledge, one or more authors of this paper were federal employees when contribu...
Landsat time series (LTS) and associated change detection algorithms are useful for monitoring the e...
Description Disturbance reference data collected via TimeSync (Cohen et al. 2010) for 19,996 plots ...
Large-scale forest monitoring benefits greatly from change detection analysis based on remote sensin...
Disturbance is a critical ecological process in forested systems, and disturbance maps are important...
Estimates of historical disturbance patterns are essential to guide forest management aimed at ensur...
Dramatic political and economic changes in Eastern European countries following the dissolution of t...
Forests contain a majority of the aboveground carbon (C) found in ecosystems, and understanding biom...
Remote sensing is a key information source for improving the spatiotemporal understanding of forest ...
The attribution of forest disturbances to disturbance agents is a critical challenge for remote sens...
Detailed knowledge of forest cover dynamics is crucial for many applications from resource managemen...
Detailed knowledge of forest cover dynamics is crucial for many applications from resource managemen...
In this study, we characterised the temporal-spectral patterns associated with identifying acute-sev...
In this study, we characterised the temporal-spectral patterns associated with identifying acute-sev...
Forest disturbances are intensifying globally, yet regional drivers of these dynamics remain poorly ...
To the best of our knowledge, one or more authors of this paper were federal employees when contribu...
Landsat time series (LTS) and associated change detection algorithms are useful for monitoring the e...
Description Disturbance reference data collected via TimeSync (Cohen et al. 2010) for 19,996 plots ...
Large-scale forest monitoring benefits greatly from change detection analysis based on remote sensin...
Disturbance is a critical ecological process in forested systems, and disturbance maps are important...
Estimates of historical disturbance patterns are essential to guide forest management aimed at ensur...
Dramatic political and economic changes in Eastern European countries following the dissolution of t...
Forests contain a majority of the aboveground carbon (C) found in ecosystems, and understanding biom...