Skip to main content

Machine learning helps predict diversity of forest tree species

By Peter Fitzgibbon - 5th August 2024 - 15:21

A collaborative team of researchers led by Ben Weinstein at the University of Florida, Oregon, US, used machine learning to generate highly detailed maps of over 100 million individual trees from 24 sites across the U.S.

The maps and findings, published in in the open-access journal PLOS Biology, provide information about individual tree species and conditions, which can greatly aid conservation efforts and other ecological projects.

Ecologists have long collected data on tree species to better understand a forest's unique ecosystem. Historically, this has been done by surveying small plots of land and extrapolating those findings, though this cannot account for the variability across the whole forest. Other methods can cover broader areas, but often struggle to categorize individual trees.

To generate large and highly detailed forest maps, the researchers trained a type of machine learning algorithm called a deep neural network using images of the tree canopy and other sensor data taken by plane. These training data covered 40,000 individual trees and, like all the data used in this study, were provided by the National Ecological Observatory Network.

NEON Workflow
Conceptual workflow for species prediction at each NEON site.

The deep neural network was able to classify most common tree species with 75 to 85% accuracy. Additionally, the algorithm could also provide other important analyses, such as reporting which trees are alive or dead.

The researchers found that the deep neural network had the highest accuracy in areas with more open space in the tree canopy and performed best when categorizing conifer tree species, such as pines, cedars, and redwoods.

NEON Fig 1
Above left: Example workflow for filtering stem data to associate with crown pixel area. Size of the dots in panels b and d are proportional to the individual tree DBH. Above right: Example tree detections and species labels for four NEON sites with closed canopy deciduous forests.

The network also performed best in areas with lower species diversity. Understanding the strengths of the algorithm can be useful for applying these methods in a variety of forest ecosystems.

The researchers also uploaded their models' predictions to Google Earth Engine so that their findings can aid other ecological research. The researchers say, "The diversity of overlapping datasets will foster richer areas of understanding for forest ecology and ecosystem functioning."

NEON 4

The authors add, "Our aim is to provide researchers with the first broad scale maps of tree species diversity from ecosystems across the United States. These canopy tree maps can be updated with new data collected at each site. By collaborating with researchers across NEON sites we can build better and better predictions over time."

More information: Weinstein BG, Marconi S, Zare A, Bohlman SA, Singh A, Graves SJ, et al. (2024) Individual canopy tree species maps for the National Ecological Observatory Network, PLoS Biology (2024). DOI: 10.1371/journal.pbio.3002700

Journal information: PLoS Biology

Source: Public Library of Science

Read More: Image Processing / Analysis Agriculture

Subscribe to our newsletter

Stay updated on the latest technology, innovation product arrivals and exciting offers to your inbox.

Newsletter