Use of ETM+ images to extend stem volume estimates obtained from LiDAR data |
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Authors: | Fabio Maselli Marta ChiesiAlessandro Montaghi Enzo Pranzini |
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Affiliation: | a IBIMET-CNR, Via Madonna del Piano 10, 50019 Sesto Fiorentino (FI), Italy b DISTAF, Università di Firenze, Via S. Bonaventura 13, 50145 Firenze, Italy c Dipartimento di Scienze della Terra, Università di Firenze, Via La Pira 4, 50121 Firenze, Italy |
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Abstract: | Airborne LiDAR techniques can provide accurate measurements of tree height, from which estimates of stem volume and forest woody biomass can be obtained. These techniques, however, are still expensive to apply repeatedly over large areas. The current paper presents a methodology which first transforms mean stand heights obtained from LiDAR over small strips into relevant stem volume estimates. These are then extended over an entire forest by applying two estimation methods (k-NN and locally calibrated regression) to Landsat ETM+ images. The methodology is tested over a coastal area covered by pine forest in the Regional Park of San Rossore (Central Italy). The results are evaluated by comparison with the ground stem volumes of a recent forest inventory, taking into consideration the effect of stand size. In general, the accuracies of two estimation methods are dependent on the size of the forest stands and are satisfactory only when considering stands larger than 5-10 ha. The outputs of the parametric regression procedure are slightly more stable than those of k-NN and more faithfully reproduce the spatial patterns of the ground data. |
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Keywords: | Stem volume LiDAR Landsat ETM+ k-NN Local regression |
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