Detailed Record



Propagating observation errors to enable scalable and rigorous enumeration of plant population abundance with aerial imagery


Abstract Estimating and monitoring plant population size is fundamental for ecological research, as well as conservation and restoration programs. High‐resolution imagery has potential to facilitate such estimation and monitoring. However, remotely sensed estimates typically have higher uncertainty than field measurements, risking biased inference on population status. We present a model that accounts for false negative (missed plants) and false positive (misclassified or double‐counted plants) error in counts from high‐resolution imagery via integration with ground data. We apply it to estimate the abundance of a foundational shrub species in post‐wildfire landscapes in the western United States. In these landscapes, plant recruitment is crucial for ecological recovery but locally patchy, motivating the use of spatially extensive measurements from unoccupied aerial systems (UAS). Integrating >16 ha of UAS imagery with >700 georeferenced field plots, we fit our model to generate insights into the prevalence and drivers of observation errors associated with classification algorithms used to distinguish individual plants, relationships between abundance and landscape context, and to generate spatially explicit maps of shrub abundance. Raw counts of plant abundance in high‐resolution imagery resulted in substantial false negative and false positive observation errors. The probability of detecting ( p ) adult plants (0.25 m tall) varied between sites within 0.52 < < 0.82, whereas the detection of smaller plants (<0.25 m) was lower, 0.03 < < 0.3. On average, we estimate that 19% of all detected plants were false positive errors, which varied spatially in relation to topographic predictors. Abundance declined toward the interior of previous wildfires and was positively associated with terrain roughness. Our study demonstrates that integrated models accounting for imperfect detection improve estimates of plant population abundance derived from inherently imperfect UAS imagery. We believe such models will further improve inference on plant population dynamics—relevant to restoration, wildlife habitat and related objectives—and echo previous calls for remote sensing applications to better differentiate between ecological and observational processes.
Authors Andrii Zaiats ORCID , T. Trevor Caughlin ORCID , Jennyffer Cruz ORCID , David S. Pilliod ORCID , Megan E. Cattau ORCID , Rongsong Liu University of WyomingORCID , Richard Rachman ORCID , Maisha Maliha , Donna Delparte ORCID , John Clare ORCID
Journal Info Wiley | Methods in Ecology and Evolution , vol: 15 , iss: 11 , pages: 2074 - 2086
Publication Date 10/13/2024
ISSN 2041-210X
TypeKeyword Image article
Open Access gold Gold Access
DOI https://doi.org/10.1111/2041-210x.14421
KeywordsKeyword Image Enumeration (Score: 0.7900685) , Aerial imagery (Score: 0.5677087) , Aerial Survey (Score: 0.53759664) , Aerial photography (Score: 0.42418602)