Iris van Duren
University of Twente
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Publication
Featured researches published by Iris van Duren.
Journal of remote sensing | 2013
Tyas Mutiara Basuki; Andrew K. Skidmore; Yousif Ali Hussin; Iris van Duren
Integration of multisensor data provides the opportunity to explore benefits emanating from different data sources. A fusion between fraction images derived from spectral mixture analysis of Landsat-7 ETM+ and phased array L-band synthetic aperture radar (PALSAR) is introduced. The aim of this fusion is to improve the estimation accuracy of above-ground biomass (AGB) in lowland mixed dipterocarp forest. Spectral mixture analysis was applied to decompose a mixture of spectral components of Landsat-7 ETM+ into vegetation, soil, and shade fractions. These fraction images were integrated with PALSAR data using the discrete wavelet transform (DWT) and Brovey transform. As a comparison, spectral reflectance of Landsat-7 ETM+ was fused directly with PALSAR data. Backscatter of horizontal–horizontal and horizontal–vertical polarizations was also used to estimate AGB. Forest inventory was carried out in 77 randomly distributed plots, the data being used for either model development or validation. A local allometric equation was applied to calculate AGB per plot. Regression models were developed by integrating field measurements of 50 sample plots with remotely sensed data, e.g. fraction images, reflectance of Landsat-7 ETM+, and PALSAR data. The models developed were validated using 27 independent sample plots. The results showed that not all fused images significantly improved the accuracy of AGB estimation. The model based on Brovey transform using the reflectance of Landsat-7ETM+ and PALSAR produced an R2 of only 0.03–0.10. By contrast, fusion between PALSAR data and fraction images using Brovey transform improved the accuracy of R2 to 0.33–0.46. Further improvement in the accuracy of estimating AGB was observed when DWT was applied to integrate PALSAR with the reflectance of Landsat-7ETM+ (R2 = 0.69–0.72) and PALSAR with fraction images (R2 = 0.70–0.75).
International Journal of Applied Earth Observation and Geoinformation | 2016
Abebe Mohammed Ali; R. Darvishzadeh; Andrew K. Skidmore; Iris van Duren; Uta Heiden; Marco Heurich
Assessments of ecosystem functioning rely heavily on quantification of vegetation properties. The search is on for methods that produce reliable and accurate baseline information on plant functional traits. In this study, the inversion of the PROSPECT radiative transfer model was used to estimate two functional leaf traits: leaf dry matter content (LDMC) and specific leaf area (SLA). Inversion of PROSPECT usually aims at quantifying its direct input parameters. This is the first time the technique has been used to indirectly model LDMC and SLA. Biophysical parameters of 137 leaf samples were measured in July 2013 in the Bavarian Forest National Park, Germany. Spectra of the leaf samples were measured using an ASD FieldSpec3 equipped with an integrating sphere. PROSPECT was inverted using a look-up table (LUT) approach. The LUTs were generated with and without using prior information. The effect of incorporating prior information on the retrieval accuracy was studied before and after stratifying the samples into broadleaf and conifer categories. The estimated values were evaluated using R2 and normalized root mean square error (nRMSE). Among the retrieved variables the lowest nRMSE (0.0899) was observed for LDMC. For both traits higher R2 values (0.83 for LDMC and 0.89 for SLA) were discovered in the pooled samples. The use of prior information improved accuracy of the retrieved traits. The strong correlation between the estimated traits and the NIR/SWIR region of the electromagnetic spectrum suggests that these leaf traits could be assessed at canopy level by using remotely sensed data.
Energy Efficiency | 2014
Melese Tesfaye Firrisa; Iris van Duren; Alexey Voinov
Renewable Energy | 2015
Iris van Duren; Alexey Voinov; Oludunsin Arodudu; Melese Tesfaye Firrisa
Isprs Journal of Photogrammetry and Remote Sensing | 2015
Abel Chemura; Iris van Duren; Louise van Leeuwen
Biomass & Bioenergy | 2013
Oludunsin Arodudu; Alexey Voinov; Iris van Duren
Ecological Indicators | 2014
Oludunsin Arodudu; Esther Ibrahim; Alexey Voinov; Iris van Duren
Journal of Cleaner Production | 2015
Alexey Voinov; Oludunsin Arodudu; Iris van Duren; Javier Morales; Ling Qin
Isprs Journal of Photogrammetry and Remote Sensing | 2016
Abebe Mohammed Ali; Andrew K. Skidmore; R. Darvishzadeh; Iris van Duren; Stefanie Holzwarth; Joerg Mueller
Biomass & Bioenergy | 2016
Devrim Murat Yazan; Iris van Duren; Martijn R.K. Mes; Sascha R.A. Kersten; Joy S. Clancy; Henk Zijm