分割
水体
计算机科学
光谱带
卫星
萃取(化学)
图像分割
深度学习
遥感
人工智能
模式识别(心理学)
环境科学
地质学
化学
色谱法
环境工程
工程类
航空航天工程
作者
Conor O’Sullivan,Seamus Coveney,Xavier Monteys,Soumyabrata Dev
标识
DOI:10.1109/piers59004.2023.10221387
摘要
We interpret a deep-learning semantic segmentation model used to classify coastline satellite images into land and water. This is to build trust in the model and gain new insight into the process of coastal water body extraction. Specifically, we seek to understand which spectral bands are important for predicting segmentation masks. This is done using a permutation importance approach. Results show that the NIR is the most important spectral band. Permuting this band lead to a decrease in accuracy of 38.12 percentage points. This is followed by Water Vapour, SWIR 1, and Blue bands with 2.58, 0.78 and 0.19 respectively. Water Vapour is not typically used in water indices and these results suggest it may be useful for water body extraction. Permuting, the Coastal Aerosol, Green, Red, RE1, RE2, RE3, RE4, and SWIR 2 bands did not decrease accuracy. This suggests they could be excluded from future model builds reducing complexity and computational requirements.
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