Authors
Rogier De Jong, Sytze de Bruin, Allard de Wit, Michael E Schaepman, David L Dent
Publication date
2011/2/15
Journal
Remote Sensing of Environment
Volume
115
Issue
2
Pages
692-702
Publisher
Elsevier
Description
Remotely sensed vegetation indices are widely used to detect greening and browning trends; especially the global coverage of time-series normalized difference vegetation index (NDVI) data which are available from 1981. Seasonality and serial auto-correlation in the data have previously been dealt with by integrating the data to annual values; as an alternative to reducing the temporal resolution, we apply harmonic analyses and non-parametric trend tests to the GIMMS NDVI dataset (1981–2006). Using the complete dataset, greening and browning trends were analyzed using a linear model corrected for seasonality by subtracting the seasonal component, and a seasonal non-parametric model. In a third approach, phenological shift and variation in length of growing season were accounted for by analyzing the time-series using vegetation development stages rather than calendar days. Results differed …
Total citations
20112012201320142015201620172018201920202021202220232024823414254694259627279927230
Scholar articles
R De Jong, S de Bruin, A de Wit, ME Schaepman… - Remote Sensing of Environment, 2011