日本地球惑星科学連合2024年大会

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[U-04] Geospatial Applications for Societal Benefits

2024年5月31日(金) 09:00 〜 10:15 展示場特設会場 (1) (幕張メッセ国際展示場 6ホール)

コンビーナ:Mohamed Shariff Bin Mohamed Shariff (Universiti Putra Malaysia )、高橋 幸弘(北海道大学・大学院理学院・宇宙理学専攻)、Faustino-Eslava Villarisco Faustino-Eslava(Geological Society of the Philippines)、Perez Gay Jane(Philippine Space Agency)、座長:高橋 幸弘(北海道大学・大学院理学院・宇宙理学専攻)、Decibel Villarisco Faustino-Eslava(Geological Society of the Philippines)、Abdul Rashid Bin Mohamed Shariff(Universiti Putra Malaysia)、Gay Jane Perez(Philippine Space Agency)

09:45 〜 10:00

[U04-04] Detection of distribution of debris in the coastal environment

*Ye Min Htay1Ahmad Shaqeer Mohamed Thaheer1San Lin Phyo1Yukihiro Takahashi1 (1.Hokkaido University)

キーワード:plastics, coastal, hyperspectral, classification

The pollution of plastics has emerged as a significant stressor on coastal environments, with plastic debris accumulating on beaches and degrading over time, leading to the formation of microplastics. This study focuses on the classification of both natural and man-made debris, including vegetation, rocks, woods, nylon, PET bottles, and plastic bags, to better understand the distribution of debris along coastal areas. Spectral characterization of each material is conducted using an InGaAs hyperspectral sensor, covering a range from 400nm to 1600nm. Laboratory measurements establish the unique spectral signatures of different debris types, facilitating their differentiation in remote sensing data. To streamline the classification process and reduce computational costs, a band selection method is applied to identify the most informative bands from the hyperspectral data. By selecting the best four bands, a simpler model is constructed, offering a more cost-effective alternative to full hyperspectral analysis while still maintaining classification accuracy. It offers an understanding of the distribution of plastics in coastal environments. Additionally, the methodology presented here demonstrates a practical approach for leveraging hyperspectral remote sensing data in environmental monitoring and management.