Author:
Yang Le,Wang Xing,Zhai Jingsheng
Abstract
Accurate acquisition for the positions of the waterlines plays a critical role in coastline extraction. However, waterline extraction from high-resolution images is a very challenging task because it is easily influenced by the complex background. To fulfill the task, two types of vision transformers, segmentation transformers (SETR) and semantic segmentation transformers (SegFormer), are introduced as an early exploration of the potential of transformers for waterline extraction. To estimate the effects of the two methods, we collect the high-resolution images from the web map services, and the annotations are created manually for training and test. Through extensive experiments, transformer-based approaches achieved state-of-the-art performances for waterline extraction in the artificial coast.
Funder
National Natural Science Foundation of China
Natural Science Foundation of Tianjin City
Subject
General Environmental Science
Reference57 articles.
1. Coastline Detection with Time Series of SAR Images;Ao,2017
2. The Role of National and International Geospatial Data Sources in Coastal Zone Management;Bayram;Fresenius Environ. Bull.,2017
3. Coastline Automatic Detection Based on High Resolution SAR Images;Cao,2016
4. Coastline Information Extraction Based on the Tasseled Cap Transformation of Landsat-8 OLI Images;Chen;Estuarine Coastal Shelf Sci.,2019
5. Efficient Sea-Land Segmentation Using Seeds Learning and Edge Directed Graph Cut;Cheng;Neurocomputing,2016
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