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Background: Seagrass beds are essential habitats in coastal ecosystems, providing valuable ecosystem services, but are threatened by various climate change and human activities. Seagrass monitoring by remote sensing have been conducted over past decades using satellite and aerial images, which have low resolution to analyze changes in the composition of different seagrass species in the meadows. Recently, unmanned aerial vehicles (UAVs) have allowed us to obtain much higher resolution images, which is promising in observing fine-scale changes in seagrass species composition. Furthermore, image processing techniques based on deep learning can be applied to the discrimination of seagrass species that were difficult based only on color variation. In this study, we conducted mapping of a multispecific seagrass bed in Saroma-ko Lagoon, Hokkaido, Japan, and compared the accuracy of the three discrimination methods of seagrass bed areas and species composition, ., pixel-based classification, object-based classification, and the application of deep neural network.
Methods: We set five benthic classes, two seagrass species ( and ), brown and green macroalgae, and no vegetation for creating a benthic cover map. High-resolution images by UAV photography enabled us to produce a map at fine scales (<1 cm resolution).
Results: The application of a deep neural network successfully classified the two seagrass species. The accuracy of seagrass bed classification was the highest (82%) when the deep neural network was applied.
Conclusion: Our results highlighted that a combination of UAV mapping and deep learning could help monitor the spatial extent of seagrass beds and classify their species composition at very fine scales.
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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9583862 | PMC |
http://dx.doi.org/10.7717/peerj.14017 | DOI Listing |
Mar Environ Res
August 2025
School of Marine Biology and Fisheries, State Key Laboratory of Marine Resource Utilization in South China Sea, Hainan University, Haikou, 570228, China. Electronic address:
Effectively monitoring fish communities is crucial for managing and protecting marine ecosystems. In recent years, environmental DNA (eDNA) sequencing has emerged as a widely used method for such monitoring. The present study utilized eDNA technology to explore the diversity of fish species in the natural seaweed field (Sargassum) and seagrass bed (Enhalus acoroides) in Qinglan Bay, Wenchang (WCQL), Hainan Island; as well as in the seaweed cultivation area (Eucheuma gelatinae) in Haiwei Bay, Changjiang (CJHW), Hainan Island, China.
View Article and Find Full Text PDFPlant Physiol Biochem
August 2025
Department of Biology, University of North Florida, Jacksonville, FL, United States. Electronic address:
Infection of the marine subtropical seagrass Thalassia testudinum Banks ex König by pathogenic Labyrinthula sp. was found to induce lesion progression, alterations to the host's oxidative metabolism, and production of defense metabolites over the early stages of infection (monitored over a 72-hr time course). By 48-hr post-infection, host oxygen consumption, internal reactive oxygen concentrations, and caspase-3 proteolytic activity reached their highest levels.
View Article and Find Full Text PDFIMA Fungus
August 2025
Department of Taxonomy, Institute of Botany, Czech Academy of Sciences, Zámek 1, Průhonice, Czech Republic.
As part of an ongoing study of marine fungi associated with seagrasses, we discovered a novel root-fungus symbiosis in the Indo-Pacific species from Mauritius. Culturing its mycobionts yielded dozens of morphologically and genetically uniform isolates, all representing a previously unknown fungus. A second undescribed fungus was isolated from saline soils in Czechia.
View Article and Find Full Text PDFMar Environ Res
August 2025
Department of Zoology and Physical Anthropology, Faculty of Biology, University of Murcia, Spain.
Syngnathids are a vulnerable fish group strongly associated with vegetated habitats in transitional waters, yet their population biology and habitat preferences remain poorly understood, particularly in environments subjected to eutrophic conditions. This study examines the spatiotemporal variation and habitat selection of syngnathid populations in the shallow areas of the Mar Menor, a hypersaline coastal lagoon undergoing severe eutrophication, which has led to mass macrophyte mortalities. Seasonal surveys conducted in 2018-2019 revealed a relatively simplified syngnathid assemblage as compared to other large European transitional systems, but highly relevant within the lagoon context.
View Article and Find Full Text PDFMar Pollut Bull
August 2025
National Marine Science Centre, Southern Cross University, PO Box 4321, Coffs Harbour, NSW 2450, Australia.
Marine plastic pollution threatens some coastal ecosystems, as it can negatively impact ecosystem processes, such as the decomposition of macrophyte detritus. While mesocosm studies have shown how plastic pollution slows the decomposition of marine macrophytes, this has yet to be evaluated in a field situation. To address this, we conducted a litter bag experiment near Coffs Harbour (Australia) to investigate the impact of low-density polyethylene (LDPE) bags on the decomposition of detritus from a dominant seagrass (Zostera muelleri) and kelp (Ecklonia radiata) species.
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