Classification and mapping of low-statured 'shrubland' cover types in
post-agricultural landscapes of the US Northeast
- URL: http://arxiv.org/abs/2205.05047v1
- Date: Mon, 9 May 2022 14:54:41 GMT
- Title: Classification and mapping of low-statured 'shrubland' cover types in
post-agricultural landscapes of the US Northeast
- Authors: Michael J Mahoney, Lucas K Johnson, Colin M Beier
- Abstract summary: Novel plant communities reshape landscapes and pose challenges for land cover classification and mapping.
In the US Northeast, emergence of low-statured woody vegetation, or'shrublands', is well-documented, but poorly understood from a landscape perspective.
We developed models to predict'shrubland' distributions at 30m resolution across New York State (NYS)
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Context: Novel plant communities reshape landscapes and pose challenges for
land cover classification and mapping that can constrain research and
stewardship efforts. In the US Northeast, emergence of low-statured woody
vegetation, or 'shrublands', instead of secondary forests in post-agricultural
landscapes is well-documented by field studies, but poorly understood from a
landscape perspective, which limits the ability to systematically study and
manage these lands. Objectives: To address gaps in classification/mapping of
low-statured cover types where they have been historically rare, we developed
models to predict 'shrubland' distributions at 30m resolution across New York
State (NYS), using machine learning and model ensembling techniques to
integrate remote sensing of structural (airborne LIDAR) and optical (satellite
imagery) properties of vegetation cover. We first classified a 1m canopy height
model (CHM), derived from a "patchwork" of available LIDAR coverages, to define
shrubland presence/absence. Next, these non-contiguous maps were used to train
a model ensemble based on temporally-segmented imagery to predict 'shrubland'
probability for the entire study landscape (NYS). Results: Approximately 2.5%
of the CHM coverage area was classified as shrubland. Models using Landsat
predictors trained on the classified CHM were effective at identifying
shrubland (test set AUC=0.893, real-world AUC=0.904), in discriminating between
shrub/young forest and other cover classes, and produced qualitatively sensible
maps, even when extending beyond the original training data. Conclusions: After
ground-truthing, we expect these shrubland maps and models will have many
research and stewardship applications including wildlife conservation, invasive
species mitigation and natural climate solutions.
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