Species level mapping of a seagrass bed using an unmanned aerial vehicle and deep learning technique

Author:

Tahara Satoru1,Sudo Kenji23,Yamakita Takehisa4ORCID,Nakaoka Masahiro2

Affiliation:

1. Graduate School of Environmental Science, Hokkaido University, Sapporo, Hokkaido, Japan

2. Akkeshi Marine Station, Field Science Center for Northern Biosphere, Hokkaido University, Akkeshi, Hokkaido, Japan

3. Japan Fisheries Research and Education Agency, Fisheries Technology Institute, Hatsukaichi, Hiroshima, Japan

4. Marine Biodiversity and Environmental Assessment Research Center (BioEnv), Research Institute for Global Change (RIGC), Japan Agency for Marine Earth Science and Technology, Yokosuka, Kanagawa, Japan

Abstract

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, i.e., pixel-based classification, object-based classification, and the application of deep neural network. Methods We set five benthic classes, two seagrass species (Zostera marina and Z. japonica), 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.

Funder

Saroma-ko Aquaculture Cooperation, Japan Society for the Promotion of Science

Environmental Restoration and Conservation Agency (Environment Research and Technology Development Fund), S-15 Predicting and Assessing Natural Capital and Ecosystem Services

SATREPS program by the Japan International Cooperation Agency (JICA) and the Japan 901 Science and Technology Agency

Publisher

PeerJ

Subject

General Agricultural and Biological Sciences,General Biochemistry, Genetics and Molecular Biology,General Medicine,General Neuroscience

Reference53 articles.

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4. Long-term analysis of Zostera noltei: a retrospective approach for understanding seagrasses’ dynamics;Calleja;Marine Environmental Research,2017

5. Application of unmanned aerial vehicle to estimate seagrass biomass in Kung Kraben Bay, Chanthaburi province, Thailand;Chayhard;International Journal of Agricultural Technology,2018

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