Classification and mapping of low-statured 'shrubland' cover types in post-agricultural landscapes of the US Northeast

05/09/2022
by   Michael J Mahoney, et al.
5

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.

READ FULL TEXT

page 8

page 12

page 13

page 15

page 16

research
04/22/2021

Continental-scale land cover mapping at 10 m resolution over Europe (ELC10)

Widely used European land cover maps such as CORINE are produced at medi...
research
04/14/2023

Sub-meter resolution canopy height maps using self-supervised learning and a vision transformer trained on Aerial and GEDI Lidar

Vegetation structure mapping is critical for understanding the global ca...
research
04/08/2020

The GeoLifeCLEF 2020 Dataset

Understanding the geographic distribution of species is a key concern in...
research
12/19/2022

Annual field-scale maps of tall and short crops at the global scale using GEDI and Sentinel-2

Crop type maps are critical for tracking agricultural land use and estim...
research
09/19/2023

Predicting fine-scale taxonomic variation in landscape vegetation using large satellite imagery data sets

Accurate information on the distribution of vegetation species is used a...
research
05/17/2022

High-resolution landscape-scale biomass mapping using a spatiotemporal patchwork of LiDAR coverages

Estimating forest aboveground biomass at fine spatial scales has become ...
research
09/26/2022

Habitat classification from satellite observations with sparse annotations

Remote sensing benefits habitat conservation by making monitoring of lar...

Please sign up or login with your details

Forgot password? Click here to reset