Estimating Canopy Height at Scale

Pauls, Jan; Zimmer, Max; Kelly, Una M.; Schwartz, Martin; Saatchi, Sassan; Ciais, Philippe; Pokutta, Sebastian; Brandt, Martin; Gieseke, Fabian

Research article in edited proceedings (conference) | Peer reviewed

Abstract

We propose a framework for global-scale canopy height estimation based on satellite data. Our model leverages advanced data preprocessing techniques, resorts to a novel loss function designed to counter geolocation inaccuracies inherent in the ground-truth height measurements, and employs data from the Shuttle Radar Topography Mission to effectively filter out erroneous labels in mountainous regions, enhancing the reliability of our predictions in those areas. A comparison between predictions and ground-truth labels yields an MAE/RMSE of 2.43 / 4.73 (meters) overall and 4.45 / 6.72 (meters) for trees taller than five meters, which depicts a substantial improvement compared to existing global-scale products. The resulting height map as well as the underlying framework will facilitate and enhance ecological analyses at a global scale, including, but not limited to, large-scale forest and biomass monitoring.

Details about the publication

Book titleProceedings of the 41st International Conference on Machine Learning
Statusaccepted / in press (not yet published)
Release year2024
ConferenceInternational Conference on Machine Learning (ICML), Wien, Austria
Keywordscanopy height; satellite data; machine learning; biomass

Authors from the University of Münster

Gieseke, Fabian
Chair of Machine Learning and Data Engineering (Prof. Gieseke) (MLDE)
Pauls, Jan
Chair of Machine Learning and Data Engineering (Prof. Gieseke) (MLDE)