One Ecosystem (Feb 2022)

U-shaped deep-learning models for island ecosystem type classification, a case study in Con Dao Island of Vietnam

  • Kinh Bac Dang,
  • Thi Ha Thanh Nguyen,
  • Huu Duy Nguyen,
  • Quang Hai Truong,
  • Thi Phuong Vu,
  • Hanh Nguyen Pham,
  • Thi Thuy Duong,
  • Van Trong Giang,
  • Duc Minh Nguyen,
  • Thu Huong Bui,
  • Benjamin Burkhard

DOI
https://doi.org/10.3897/oneeco.7.e79160
Journal volume & issue
Vol. 7
pp. 1 – 23

Abstract

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The monitoring of ecosystem dynamics utilises time and resources from scientists and land-use managers, especially in wetland ecosystems in islands that have been affected significantly by both the current state of oceans and human-made activities. Deep-learning models for natural and anthropogenic ecosystem type classification, based on remote sensing data, have become a tool to potentially replace manual image interpretation. This study proposes a U-Net model to develop a deep learning model for classifying 10 island ecosystems with cloud- and shadow-based data using Sentinel-2, ALOS and NOAA remote sensing data. We tested and compared different optimiser methods with two benchmark methods, including support vector machines and random forests. In total, 48 U-Net models were trained and compared. The U-Net model with the Adadelta optimiser and 64 filters showed the best result, because it could classify all island ecosystems with 93 percent accuracy and a loss function value of 0.17. The model was used to classify and successfully manage ecosystems on a particular island in Vietnam. Compared to island ecosystems, it is not easy to detect coral reefs due to seasonal ocean currents. However, the trained deep-learning models proved to have high performances compared to the two traditional methods. The best U-Net model, which needs about two minutes to create a new classification, could become a suitable tool for island research and management in the future.

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