Affiliation:
1. Remote Sensing Information and Digital Earth Center, College of Computer Science and Technology, Qingdao University, Qingdao 266071, China
2. Key Laboratory of Digital Earth Science, Aerospace Information Research Institute, Chinese Academy of Sciences, Beijing 100094, China
Abstract
Remote sensing techniques for shoreline extraction are crucial for monitoring changes in erosion rates, surface hydrology, and ecosystem structure. In recent years, Convolutional neural networks (CNNs) have developed as a cutting-edge deep learning technique that has been extensively used in shoreline extraction from remote sensing images, owing to their exceptional feature extraction capabilities. They are progressively replacing traditional methods in this field. However, most CNN models only focus on the features in local receptive fields, and overlook the consideration of global contextual information, which will hamper the model’s ability to perform a precise segmentation of boundaries and small objects, consequently leading to unsatisfactory segmentation results. To solve this problem, we propose a parallel semantic segmentation network (TCU-Net) combining CNN and Transformer, to extract shorelines from multispectral remote sensing images, and improve the extraction accuracy. Firstly, TCU-Net imports the Pyramid Vision Transformer V2 (PVT V2) network and ResNet, which serve as backbones for the Transformer branch and CNN branch, respectively, forming a parallel dual-encoder structure for the extraction of both global and local features. Furthermore, a feature interaction module is designed to achieve information exchange, and complementary advantages of features, between the two branches. Secondly, for the decoder part, we propose a cross-scale multi-source feature fusion module to replace the original UNet decoder block, to aggregate multi-scale semantic features more effectively. In addition, a sea–land segmentation dataset covering the Yellow Sea region (GF Dataset) is constructed through the processing of three scenes from Gaofen-6 remote sensing images. We perform a comprehensive experiment with the GF dataset to compare the proposed method with mainstream semantic segmentation models, and the results demonstrate that TCU-Net outperforms the competing models in all three evaluation indices: the PA (pixel accuracy), F1-score, and MIoU (mean intersection over union), while requiring significantly fewer parameters and computational resources compared to other models. These results indicate that the TCU-Net model proposed in this article can extract the shoreline from remote sensing images more effectively, with a shorter time, and lower computational overhead.
Funder
National Natural Science Foundation of China
Shandong Provincial Natural Science Foundation, China
“Taishan Scholar” Project of Shandong Province
Strategic Priority Research Program of the Chinese Academy of Sciences-A
Subject
General Earth and Planetary Sciences
Reference59 articles.
1. Zollini, S., Alicandro, M., Cuevas-González, M., Baiocchi, V., Dominici, D., and Buscema, P.M. (2020). Shoreline extraction based on an active connection matrix (ACM) image enhancement strategy. J. Mar. Sci. Eng., 8.
2. Shoreline Definition and Detection: A Review;Boak;J. Coast. Res.,2005
3. A fully automated method for monitoring the intertidal topography using Video Monitoring Systems;Soloy;Coast. Eng.,2021
4. Waterline Extraction for Artificial Coast With Vision Transformers;Yang;Front. Environ. Sci.,2022
5. Rocky Shoreline Extraction Using a Deep Learning Model and Object-Based Image Analysis. Int. Arch. Photogramm;Bengoufa;Remote Sens. Spat. Inf. Sci. ISPRS Arch.,2021
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