日本地球惑星科学連合2025年大会

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[J] ポスター発表

セッション記号 A (大気水圏科学) » A-CG 大気海洋・環境科学複合領域・一般

[A-CG51] 沿岸海洋生態系-2.サンゴ礁・藻場・マングローブ

2025年5月28日(水) 17:15 〜 19:15 ポスター会場 (幕張メッセ国際展示場 7・8ホール)

コンビーナ:梅澤 有(東京農工大学)、樋口 富彦(京都大学 人間・環境学研究科)、中村 隆志(東京科学大学 環境・社会理工学院)、渡辺 謙太(港湾空港技術研究所)

17:15 〜 19:15

[ACG51-P02] Automated Detection of Drifting Seaweed in the East China Sea Using Multispectral Satellite Imagery

*NG KAI HSIANG1加古 真一郎1堤 英輔2中村 啓彦2、小針 統2 (1.鹿児島大学大学院理工学研究科、2.鹿児島大学水産学部)

キーワード:流れ藻、人工衛星、東シナ海、マルチスペクトル計測装置、機械学習

Drifting seaweed in the East China Sea (ECS) is a vital resource for aquaculture, particularly for harvesting juvenile yellowtail. Fishermen along Japan's west coast rely on catching wild yellowtail juveniles, which feed on drifting seaweed. Various seaweed species provide essential habitats and trophic support for marine organisms (Rosenblatt et al., 2022); however, their precise origins remain uncertain (Lin et al., 2023). Satellite imagery is used to study the ecological impact of drifting seaweed, offering advantages such as cost-effectiveness and wide-area monitoring (Zhu et al., 2023). Drifting seaweed exhibits spectral properties similar to common vegetation, absorbing sunlight and reflecting in the red and near-infrared (NIR) wavelengths. The Normalized Difference Vegetation Index (NDVI) is calculated as the ratio between red and NIR reflectance, with seaweed-containing pixels displaying higher NDVI values than surrounding waters. This study develops an automated system to improve seaweed detection efficiency using high-resolution Multi-Spectral Instrument (MSI) satellite imagery to analyze its spatiotemporal distribution. However, tracking drifting seaweed via satellite imagery is highly dependent on weather conditions, particularly cloud interference and satellite orbital constraints. To mitigate atmospheric interference, image processing techniques are applied to remove cloud interference and enhance detection accuracy. As a next step, we will implement machine learning (ML) to automatically identify seaweed based on NDVI data, enhancing detection efficiency and accuracy. In the next phase, we plan to integrate a high-resolution ocean surface numerical model to forecast seaweed drift pathways, improving our understanding of seaweed transport dynamics and ecological evolution.