Abstract

Seagrass ecosystems are highly sensitive to environmental change. They are also in global decline and under threat from a variety of anthropogenic factors. There is now an urgency to establish robust monitoring methodologies so that changes in seagrass abundance and distribution in these sensitive coastal environments can be understood. Typical monitoring approaches have included remote sensing from satellites and airborne platforms, ground based ecological surveys and snorkel/scuba surveys. These techniques can suffer from temporal and spatial inconsistency, or are very localised making it hard to assess seagrass meadows in a structured manner. Here we present a novel technique using a lightweight (sub 7 kg) drone and consumer grade cameras to produce very high spatial resolution (∼4 mm pixel−1) mosaics of two intertidal sites in Wales, UK. We present a full data collection methodology followed by a selection of classification techniques to produce coverage estimates at each site. We trialled three classification approaches of varying complexity to investigate and illustrate the differing performance and capabilities of each. Our results show that unsupervised classifications perform better than object-based methods in classifying seagrass cover. We also found that the more sparsely vegetated of the two meadows studied was more accurately classified - it had lower root mean squared deviation (RMSD) between observed and classified coverage (9–9.5%) compared to a more densely vegetated meadow (RMSD 16–22%). Furthermore, we examine the potential to detect other biotic features, finding that lugworm mounds can be detected visually at coarser resolutions such as 43 mm pixel−1, whereas smaller features such as cockle shells within seagrass require finer grained data (<17 mm pixel−1).

Highlights

  • object based image analysis (OBIA) classifications at both sites resulted in greater numbers of pixels being labelled as seagrass, which in turn has driven the higher areal coverage estimates

  • This study describes for the first time an approach to intertidal seagrass mapping using a lightweight drone to obtain very fine spatial resolution data

  • In this study we have demonstrated the potential of low-cost, flexible, drone-based data collection techniques for monitoring intertidal seagrass meadows

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Summary

Introduction

Seagrass ecosystems have a global distribution, and they play an integral role in delivering multiple ecosystem services to coastal regions (Barbier et al, 2011; Orth et al, 2006), including the provision of nursery ground for commercial fish species (Beaumont et al, 2008; Bertelli and Unsworth, 2014), sediment stabilization (McGlathery et al, 2012), pathogen reduction in coastal waters (Lamb et al, 2017) and carbon sequestration (Fourqurean et al, 2012; Macreadie et al, 2014) Despite their evident ecological importance, seagrass ecosystems have been in decline for three decades (Waycott et al, 2009), with one in five seagrass-habitat associated species at some risk of extinction according to International Union for the Conservation of Nature (IUCN) categorisation (Short et al, 2011). The inability of satellite measurements to capture the fine spatial patterns in the distribution of plants and biomass within seagrass meadows, in sparsely vegetated areas (Valle et al, 2015), means that current scientific understanding of seasonal growth patterns and the causes of meadow decline is highly uncertain

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