Miltiadou, M, Campbell, NDF, Gonzalez Aracil, S, Brown, T and Grant, MG 2018 Detection of dead standing Eucalyptus camaldulensis without tree delineation for managing biodiversity in native Australian forest. International Journal of Applied Earth Observation and Geoinformation, 67. 135-147. https://doi.org/10.1016/j.jag.2018.01.008
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Abstract/Summary
In Australia, many birds and arboreal animals use hollows for shelters, but studies predict shortage of hollows in near future. Aged dead trees are more likely to contain hollows and therefore automated detection of them plays a substantial role in preserving biodiversity and consequently maintaining a resilient ecosystem. For this purpose full-waveform LiDAR data were acquired from a native Eucalypt forest in Southern Australia. The structure of the forest significantly varies in terms of tree density, age and height. Additionally, Eucalyptus camaldulensis have multiple trunk splits making tree delineation very challenging. For that reason, this paper investigates automated detection of dead standing Eucalyptus camaldulensis without tree delineation. It also presents the new feature of the open source software DASOS, which extracts features for 3D object detection in voxelised FW LiDAR. A random forest classifier, a weighted-distance KNN algorithm and a seed growth algorithm are used to create a 2D probabilistic field and to then predict potential positions of dead trees. It is shown that tree health assessment is possible without tree delineation but since it is a new research directions there are many improvements to be made.
Item Type: | Publication - Article |
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Divisions: | Plymouth Marine Laboratory > Science Areas > Earth Observation Science and Applications |
Depositing User: | Kim Hockley |
Date made live: | 09 Jul 2018 13:04 |
Last Modified: | 25 Apr 2020 09:59 |
URI: | https://plymsea.ac.uk/id/eprint/7951 |
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