Dingfeng Yu, Lirong Ren, Chen Chen, Xiangfeng Kong, Maosheng Zhou, Lei Yang, Zhen Han, Shunqi Pan
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An AttSDNet model for multi-scale feature perception enhanced remote sensing classification of coastal salt-marsh wetlands.
Coastal salt-marsh wetlands have important ecological value, and play an important role in coastal blue carbon sink. However, under the influence of various external and natural factors, coastal wetland ecosystems worldwide have severely degraded, leading to biodiversity loss and ecological damage. Based on satellite remote sensing data and deep learning methods, it is an effective means to quickly monitor the spatial distribution of coastal wetlands, which is very important for the protection and restoration of coastal wetlands. The U-Net deep learning framework, because of its low data requirements, fast training speed, and efficient architectural design, has seen rapid development and widespread application in the field of image segmentation. However, applying the classic U-Net architecture to the classification of coastal wetland images, which have rich and complex cover types. It struggles to effectively capture the spatial dependencies and multi-scale feature information present in remote sensing images. To address this issue, this study introduces an enhanced U-Net model that integrates attention mechanisms and multi-scale feature extraction. This model employs stacked dilated convolutions to improve the U-Net's single receptive field limitation, thereby enhancing the model's ability to learn the multi-scale features of typical land covers in complex coastal wetlands. Furthermore, a combined channel-spatial attention mechanism module is incorporated to strengthen the extraction and learning of spectral and spatial features of remote sensing image land covers. This highlights the feature of small-scale land covers that are difficult to capture. Remote sensing image classification was conducted using Sentinel-2 optical imagery on the coastal wetlands of the Yellow River Estuary and Jiaozhou Bay located in Shandong Peninsula, China. An independent test dataset was used to validate the model's accuracy, and comparative experiments were conducted with several existing classification methods. The results show that the proposed model achieved the highest classification accuracy in coastal wetland remote sensing image classification compared to SVM, VGG, FCN, U-Net, ResU-Net, and SDU-Net models. The overall accuracy of the two study areas is 92.73% and 98.69%, and the MIoU is 77.68% and 83.76%, respectively. For different scales of land cover types, such as larger-scale distributions of Tamarix chinensis and ponds, the improved model's MIoU increased by 17.72% and 5.45%, respectively. For elongated structures like artificial roads and tidal channels, the MIoU improved by 9.82% and 5.41%. The proposed method effectively extracts and learns the remote sensing feature information of land cover targets at different scales, enhances the classification accuracy of large-scale land covers, and effectively addresses the issues of detail loss in small target classification and disconnection in linear land cover classification. It provides a more accurate and robust technical method for coastal wetland remote sensing classification, offering a solid data foundation for analyzing the distribution of typical land covers. Additionally, it has significant implications for efficiently monitoring biodiversity and protecting the ecological environment in coastal wetlands.
期刊介绍:
Marine Environmental Research publishes original research papers on chemical, physical, and biological interactions in the oceans and coastal waters. The journal serves as a forum for new information on biology, chemistry, and toxicology and syntheses that advance understanding of marine environmental processes.
Submission of multidisciplinary studies is encouraged. Studies that utilize experimental approaches to clarify the roles of anthropogenic and natural causes of changes in marine ecosystems are especially welcome, as are those studies that represent new developments of a theoretical or conceptual aspect of marine science. All papers published in this journal are reviewed by qualified peers prior to acceptance and publication. Examples of topics considered to be appropriate for the journal include, but are not limited to, the following:
– The extent, persistence, and consequences of change and the recovery from such change in natural marine systems
– The biochemical, physiological, and ecological consequences of contaminants to marine organisms and ecosystems
– The biogeochemistry of naturally occurring and anthropogenic substances
– Models that describe and predict the above processes
– Monitoring studies, to the extent that their results provide new information on functional processes
– Methodological papers describing improved quantitative techniques for the marine sciences.