Very High-Resolution Imagery and Machine Learning for Detailed Mapping of Riparian Vegetation and Substrate Types

Rommel E, Giese L, Fricke K, Kathöfer F, Heuner M, Mölter T, Deffert P, Asgari M, Näthe P, Dzunic F, Rock G, Bongartz J, Burkart A, Quick I, Schröder U, Baschek B

Research article (journal) | Peer reviewed

Abstract

Riparian zones fulfill diverse ecological and economic functions. Sustainable management requires detailed spatial information about vegetation and hydromorphological properties. In this study, we propose a machine learning classification workflow to map classes of the thematic levels Basic surface types (BA), Vegetation units (VE), Dominant stands (DO) and Substrate types (SU) based on multispectral imagery from an unmanned aerial system (UAS). A case study was carried out in Emmericher Ward on the river Rhine, Germany. The results showed that: (I) In terms of overall accuracy, classification results decreased with increasing detail of classes from BA (88.9%) and VE (88.4%) to DO (74.8%) or SU (62%), respectively. (II) The use of Support Vector Machines and Extreme Gradient Boost algorithms did not increase classification performance in comparison to Random Forest. (III) Based on probability maps, classification performance was lower in areas of shaded vegetation and in the transition zones. (IV) In order to cover larger areas, a gyrocopter can be used applying the same workflow and achieving comparable results as by UAS for thematic levels BA, VE and homogeneous classes covering larger areas. The generated classification maps are a valuable tool for ecologically integrated water management.

Details about the publication

JournalRemote Sensing (Remote Sens.)
Volume14
Issue4
StatusPublished
Release year2022 (16/02/2022)
Language in which the publication is writtenEnglish
DOI10.3390/rs14040954
Link to the full texthttps://www.mdpi.com/2072-4292/14/4/954

Authors from the University of Münster

Giese, Laura Denise Marlene
Institute of Landscape Ecology (ILÖK)