Surface sediment classification using a deep learning model and unmanned aerial vehicle data of tidal flats.

Journal: Marine pollution bulletin
PMID:

Abstract

This study proposes a deep learning model, U-Net, to improve surface sediment classification using high-resolution unmanned aerial vehicle (UAV) images. We constructed training datasets with UAV images and corresponding labeling data acquired from three field surveys on the Hwangdo tidal flat. The labeling data indicated the distribution of surface sediment types. We compared the performance of the U-Net model trained in various implementation environments, such as surface sediment criteria, input datasets, and classification models. The U-Net trained with five class criteria-derived from previous classification criteria-yielded valid results (overall accuracy:65.6 %). The most accurate results were acquired from trained U-Net with all input datasets; in particular, the tidal channel density caused a significant increase in accuracy. The accuracy of the U-Net was approximately 20 % higher than that of other classification models. These results demonstrate that surface sediment classification using UAV images and the U-Net model is effective.

Authors

  • Kye-Lim Kim
    Korea Ocean Satellite Center, Korea Institute of Ocean Science and Technology, Busan, Republic of Korea.
  • Han-Jun Woo
    Korea Seas Geosystem Research Unit, Korea Institute of Ocean Science and Technology, Busan, Republic of Korea.
  • Hyeong-Tae Jou
    Marine Active Fault Research Unit, Korea Institute of Ocean Science and Technology, Busan, Republic of Korea.
  • Hahn Chul Jung
    Department of Earth System Science, Yonsei University, Seoul, Republic of Korea.
  • Seung-Kuk Lee
    Department of Environmental Geosciences, Pukyong National University, Busan, Republic of Korea.
  • Joo-Hyung Ryu
    Korea Ocean Satellite Center, Korea Institute of Ocean Science and Technology, Busan, Republic of Korea; Department of Ocean Environmental System Science, University of Science and Technology, Daejeon, Republic of Korea. Electronic address: jhryu@kiost.ac.kr.