Sea-land segmentation method based on an improved MA-Net for Gaofen-2 images

IF 2.7 4区 地球科学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Earth Science Informatics Pub Date : 2024-06-26 DOI:10.1007/s12145-024-01391-7
Chengqian Lu, YuanChao Wen, Yangdong Li, Qinghong Mao, Yuehua Zhai
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Abstract

This paper proposes EMA-Net, a fully convolutional neural network, to improve the effectiveness of sea-land segmentation on Gaofen-2 images. The aim is to address the issue of low segmentation accuracy in sea-land boundary regions when using remote sensing images for sea-land segmentation. The MA-Net network structure is enhanced by splitting the EfficientNet-B0 benchmark network into five convolutional blocks. The five downsampled convolutional blocks in MA-Net are then sequentially replaced. Furthermore, an extra loss term for the sea-land boundary region is incorporated through the introduction of a boundary region enhancement loss function. This approach encourages the network to focus on learning the boundary region between the sea and land. This improves the accuracy of its prediction. The study presents the results of segmentation experiments conducted on a constructed Gaofen-2 image dataset. The improved EMA-Net model, utilizing the boundary region enhancement loss, achieves better performance than other methods for both the overall region and the sea-land boundary region. The LR (Land Recall), LP (Land Precision), SR (Sea Recall), SP (Sea Precision), F1 Score (F1-Score), mIoU (Mean Intersection over Union), and EA (Edge Accuracy) are averaged over multiple experiments to reach 97.78%, 96.63%, 97.65%, 98.48%, 97.62%, 95.37%, and 87.08% respectively. Additional experiments on the IKONOS images also confirmed the adaptability of the proposed method to high-resolution imagery.

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基于改进型 MA-Net 的高分辨率-2 图像海域分割方法
本文提出了一种全卷积神经网络 EMA-Net,以提高高分二号(Gaofen-2)图像的海域分割效果。其目的是解决在使用遥感图像进行海域分割时,海域边界区域分割精度较低的问题。通过将 EfficientNet-B0 基准网络拆分为五个卷积块,增强了 MA-Net 网络结构。然后依次替换 MA-Net 中的五个下采样卷积块。此外,通过引入边界区域增强损失函数,为海陆边界区域加入了额外的损失项。这种方法鼓励网络重点学习海陆边界区域。这就提高了预测的准确性。本研究介绍了在构建的高分-2 图像数据集上进行的分割实验结果。利用边界区域增强损失的改进型 EMA-Net 模型在整体区域和海陆边界区域的性能均优于其他方法。多次实验的平均值分别为:LR(陆地召回率)、LP(陆地精度)、SR(海洋召回率)、SP(海洋精度)、F1 分数(F1-Score)、mIoU(平均交叉联合率)和 EA(边缘精度),分别达到 97.78%、96.63%、97.65%、98.48%、97.62%、95.37% 和 87.08%。在 IKONOS 图像上进行的其他实验也证实了所提方法对高分辨率图像的适应性。
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来源期刊
Earth Science Informatics
Earth Science Informatics COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS-GEOSCIENCES, MULTIDISCIPLINARY
CiteScore
4.60
自引率
3.60%
发文量
157
审稿时长
4.3 months
期刊介绍: The Earth Science Informatics [ESIN] journal aims at rapid publication of high-quality, current, cutting-edge, and provocative scientific work in the area of Earth Science Informatics as it relates to Earth systems science and space science. This includes articles on the application of formal and computational methods, computational Earth science, spatial and temporal analyses, and all aspects of computer applications to the acquisition, storage, processing, interchange, and visualization of data and information about the materials, properties, processes, features, and phenomena that occur at all scales and locations in the Earth system’s five components (atmosphere, hydrosphere, geosphere, biosphere, cryosphere) and in space (see "About this journal" for more detail). The quarterly journal publishes research, methodology, and software articles, as well as editorials, comments, and book and software reviews. Review articles of relevant findings, topics, and methodologies are also considered.
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