Integrating Sentinel 2 Imagery with High-Resolution Elevation Data for Automated Inundation Monitoring in Vegetated Floodplain Wetlands

Author:

Heath Jessica T.1,Grimmett Liam1ORCID,Gopalakrishnan Tharani1,Thomas Rachael F.2ORCID,Lenehan Joanne3

Affiliation:

1. NSW Department of Climate Change, Energy, the Environment and Water, Wetlands and Coastal Science, Lidcombe, NSW 2141, Australia

2. NSW Department of Climate Change, Energy, the Environment and Water, Water for the Environment, Parramatta, NSW 2150, Australia

3. NSW Department of Climate Change, Energy, the Environment and Water, Environmental Water and Floodplains, Port Macquarie, NSW 2444, Australia

Abstract

Monitoring inundation in flow-dependent floodplain wetlands is important for understanding the outcomes of environmental water deliveries that aim to inundate different floodplain wetland vegetation types. The most effective way to monitor inundation across large landscapes is with remote sensing. Spectral water indices are often used to detect water in the landscape, but there are challenges in using them to map inundation within the complex vegetated floodplain wetlands. The current method used for monitoring inundation in the large floodplain wetlands that are targets for environmental water delivery in the New South Wales portion of the Murray–Darling Basin (MDB) in eastern Australia considers the complex mixing of water with vegetation and soil, but it is a time-consuming process focused on individual wetlands. In this study, we developed the automated inundation monitoring (AIM) method to enable an efficient process to map inundation in floodplain wetlands with a focus on the lower Lachlan floodplain utilising 25 Sentinel-2 image dates spanning from 2019 to 2023. A local adaptive thresholding (ATH) approach of a suite of spectral indices combined with best available DEM and a cropping layer were integrated into the AIM method. The resulting AIM maps were validated against high-resolution drone images, and vertical and oblique aerial images. Although instances of omission and commission errors were identified in dense vegetation and narrow creek lines, the AIM method showcased high mapping accuracy with overall accuracy of 0.8 measured. The AIM method could be adapted to other MDB wetlands that would further support the inundation monitoring across the basin.

Funder

NSW Department of Climate Change, Energy, the Environment and Water

Publisher

MDPI AG

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