Accurate Mapping of Downed Deadwood in a Dense Deciduous Forest Using UAV-SfM Data and Deep Learning

Dietenberger S; Mueller MM; Stöcker B; Dubois C; Arlaud H; Adam M; Hese S; Meyer H; Thiel C

Research article (journal) | Peer reviewed

Abstract

Deadwood is a vital component of forest ecosystems, significantly contributing to biodiversity and carbon storage. Accurate mapping of deadwood is essential for ecological monitoring and sustainable forest management. This study introduces a method for downed deadwood mapping using a convolutional neural network (CNN) applied to very high-resolution UAV RGB imagery. The research was conducted in Hainich National Park, central Germany, aiming to enhance the precision of coarse woody debris (CWD) delineation in a dense and structurally diverse temperate deciduous forest. Key objectives included testing the deep learning (DL) model’s performance at area, length, and object levels and benchmarking its accuracy against a traditional object-based image analysis (OBIA) method. Deadwood volume was calculated from the mapping results. By implementing a U-Net architecture with a ResNet-34 backbone and utilizing data augmentation techniques, the model achieved very high classification performance (F1-scores between 73% and 96%). It provided precise delineation of individual CWD objects from the underlying ground, representing detailed stem forms. High precision values highlight the reliability of the mapping results, while lower recall values indicate that some CWD objects, especially smaller branches, were missed. The DL approach achieved higher accuracy values across all testing methods compared to the OBIA method. The study also addresses the challenges posed by spectral ambiguities in decomposed deadwood and recommends future research directions for enhancing model generalization across diverse forest types and acquisition conditions.

Details about the publication

JournalRemote Sensing (Remote Sens.)
Volume17
Issue9
StatusPublished
Release year2025
Language in which the publication is writtenEnglish
DOI10.3390/rs17091610
Link to the full texthttps://www.mdpi.com/2072-4292/17/9/1610
Keywords unoccupied aerial vehicles (UAV); deadwood; coarse woody debris (CWD); deep learning (DL); convolutional neural network (CNN); structure from motion (SfM); deciduous forest

Authors from the University of Münster

Meyer, Hanna
Professorship of Remote Sensing and Spatial Modelling