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Sensitivity of narrowband vegetation indices to boreal forest LAI,reflectance seasonality and species composition
Institution:1. Global Change Research Institute, Academy of Sciences of the Czech Republic, Bělidla 4a, 60300 Brno, Czech Republic;2. Department of Experimental Plant Biology, Faculty of Science, Charles University in Prague, Vini?ná 5, 12844 Prague, Czech Republic;1. Informatica Trentina, via G. Gilli 2, 38121 Trento, Italy;2. Institute for Applied Remote Sensing, Eurac Research, Viale Druso, 1, 39100 Bolzano Italy;3. Department of Information Engineering and Computer Science, University of Trento, Via Sommarive, 14, 38121 Trento Italy;4. Institute of Ecology, University of Innsbruck, Sternwartestr. 15, 6020 Innsbruck Austria
Abstract:There is growing evidence that imaging spectroscopy could improve the accuracy of satellite-based retrievals of vegetation attributes, such as leaf area index (LAI) and biomass. In this study, we evaluated narrowband vegetation indices (VIs) for estimating overstory effective LAI (LAIeff) in a southern boreal forest area for the period between the end of snowmelt and maximum LAI using three Hyperion images and concurrent field measurements. We compared the performance of narrowband VIs with two SPOT HRVIR images, which closely corresponded to the imaging dates of the Hyperion data, and with synthetic broadband VIs computed from Hyperion images. According to the results, narrowband VIs based on near infrared (NIR) bands, and NIR and shortwave infrared (SWIR) bands showed the strongest linear relationships with LAIeff over its typical range of variation and for the studied period of the snow-free season. The relationships were not dependent on dominant tree species (coniferous vs. broadleaved), which is an advantage in heterogeneous boreal forest landscapes. The best VIs, particularly those based on NIR spectral bands close to the 1200 nm liquid water absorption feature, provided a clear improvement over the best broadband VIs.
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