日本地球惑星科学連合2025年大会

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[E] 口頭発表

セッション記号 U (ユニオン) » ユニオン

[U-04] Geospatial Applications for Societal Benefits

2025年5月30日(金) 13:45 〜 15:15 展示場特設会場 (1) (幕張メッセ国際展示場 7・8ホール)

コンビーナ:Mohamed Shariff Abdul Rashid Bin(Universiti Putra Malaysia )、高橋 幸弘(北海道大学・大学院理学院・宇宙理学専攻)、Perez Gay Jane(Philippine Space Agency)、Chairperson:SITI KHAIRUNNIZA BINTI BEJO(Universiti Putra Malaysia)

14:00 〜 14:15

[U04-02] Application of Remote Sensing, Machine Learning, and Spectral Measurement for Coffee Leaf Rust Early Detection and Classification in Rwanda

*Jean De Dieu Byiringiro1Ahmad Shaqeer Mohamed Thaheer1Garid Zorigoo1Takahashi Yukihiro1 (1.Hokkaido University)

キーワード:Remote Sensing, Spectral Libraries, Coffee Plants, Machine Learning

Over the last decade, coffee farmers have been experiencing the problem of coffee leaf rust disease (Hemileia vastatrix) that has been diminishing their harvest in Rwanda, due to the unmatured defoliation caused by its pathogenic fungus. Different approaches were put in place but until now no effective approach is in place to tackle rust disease at an early stage.

We developed an algorithm to detect and classify coffee leaf rust by using Sentinel-2 images and spectrometer data. We applied a Decision Tree DT and Support Vector Machine SVM algorithms on Sentinel-2 images and spectrometer data respectively to classify coffee rust disease into 4 classes: healthy coffee, rust disease at a low level, medium, and high level. Band8, Band8A, and Band11 were selected for Sentinel-2 images, and we found that the following 10 bands 579.0, 578.5, 579.5, 578.0, 580.0, 697.0, 696.5, 697.5, 698.0, 696.0 of spectrometer data are sensitive to healthy and diseased coffee plants at an elevation angle of -900 (Nadir) and height of 1.5m.

In addition, we found that fertilizer, soil moisture, and water contribute tremendously to the spectral reflectance of healthy and diseased coffee plants. Another advantage of our algorithms is that we can distinguish coffee from other crops and forests.