April 3, 2021
Journal Article

Deep learning classification of cheatgrass invasion in the Western United States using biophysical and remote sensing data

Abstract

Cheatgrass (Bromus tectorum) invasion is driving an emerging cycle of increased fire frequency and irreversible loss of wildlife habitat in the western US. Yet, detailed spatial information about its occurrence is still lacking for much of its presumably invaded range. Deep learning (DL) has shown promise for many remote sensing applications and represents an intriguing method for detecting and monitoring cheatgrass or other biological invasions. We compare two DL neural networks and the more conventional Random Forest and Logistic Regression methods to improve upon a previous effort to map cheatgrass occurrence at >2% canopy cover. High-dimensional sets of biophysical, MODIS, and Landsat-7 ETM+ predictor variables are also compared to evaluate different multi-modal data strategies. All model configurations improved results relative to the case study and accuracy generally improved by combining data from both sensors with biophysical data. We depict cheatgrass occurrence at 30-meter pixel resolution with an estimated 78.1% accuracy, compared to 250-meter resolution and 71% map accuracy in the case study. Furthermore, DL is shown to be competitive with well-established machine learning methods in a limited data regime, suggesting it can be an effective tool for mapping biological invasions and more broadly for multi-modal remote sensing applications.

Published: April 3, 2021

Citation

Larson K.B., and A.R. Tuor. 2021. Deep learning classification of cheatgrass invasion in the Western United States using biophysical and remote sensing data. Remote Sensing 13, no. 7:Article No. 1246. PNNL-SA-159598. doi:10.3390/rs13071246