Application of deep learning techniques for determining the spatial extent and classification of seagrass beds, Trang, Thailand

被引:13
作者
Yamakita, Takehisa [1 ,2 ,3 ]
Sodeyama, Fumiaki [1 ]
Whanpetch, Napakhwan [4 ]
Watanabe, Kentaro [5 ]
Nakaoka, Masahiro [6 ]
机构
[1] Japan Agcy Marine Earth Sci & Technol, 2-15 Natsushima Cho, Yokosuka, Kanagawa 2370061, Japan
[2] Hiroshima Univ, Environm Dynam & Management Grp, Grad Sch Biosphere Sci, 1-3-2 Kagamiyama, Higashihiroshima, Hiroshima 7398511, Japan
[3] Sophia Univ, Div Global Environm Studies, Chiyoda Ku, 7-1 Kioicho, Tokyo 1028554, Japan
[4] Kasetsart Univ, Dept Marine Sci, Fac Fisheries, 50 Ngam Wong Wan Rd, Bangkok 10900, Thailand
[5] Waterfront Vitalizat & Environm Res Fdn, 405 Malissa Hills,176-4, Naha, Okinawa 9020067, Japan
[6] Hokkaido Univ, Akkeshi Marine Stn, Field Sci Ctr Northern Biosphere, Aikappu 1, Akkeshi, Hokkaido 0881113, Japan
基金
日本学术振兴会;
关键词
Andaman Sea; deep learning; land cover classification; long-term dynamics; remote sensing; SOUTHEAST-ASIA; LAND-COVER; BIODIVERSITY; EAST; CRITERIA; REGION; AREAS; JAPAN; SEA;
D O I
10.1515/bot-2018-0017
中图分类号
Q94 [植物学];
学科分类号
071001 ;
摘要
Few studies have investigated the long-term temporal dynamics of seagrass beds, especially in Southeast Asia. Remote sensing is one of the best methods for observing these dynamic patterns, and the advent of deep learning technology has led to recent advances in this method. This study examined the feasibility of applying image classification methods to supervised classification and deep learning methods for monitoring seagrass beds. The study site was a relatively natural seagrass bed in Hat Chao Mai National Park, Trang Province, Thailand, for which aerial photographs from the 1970s were available. Although we achieved low accuracy in differentiating among various densities of vegetation coverage, classification related to the presence of seagrass was possible with an accuracy of 80% or more using both classification methods. Automatic classification of benthic cover using deep learning provided similar or better accuracy than that of the other methods even when grayscale images were used. The results also demonstrate that it is possible to monitor the temporal dynamics of an entire seagrass area, as well as variations within sub-regions, located in close proximity to a river mouth.
引用
收藏
页码:291 / 307
页数:17
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