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Sea-Land Segmentation Using Deep Learning Techniques for Landsat-8 OLI Imagery

机译:使用深度学习技术对Landsat-8 OLI图像进行海陆分割

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摘要

Automated coastline extraction from optical satellites is fundamental to coastal mapping, and sea-land segmentation is the core technology of coastline extraction. Deep convolutional neural networks (DCNNs) have performed well in semantic segmentation in recent years. However, sea-land segmentation using deep learning techniques remains a challenging task, due to the lack of a benchmark dataset and the difficulty of deciding which semantic segmentation model to use. We present a comparative framework of sea-land segmentation to Landsat-8 OLI imagery via semantic segmentation in deep learning techniques. Three issues are investigated: (1) constructing a sea-land benchmark dataset using Landsat-8 Operational Land Imager (OLI) imagery consisting of 18,000 km(2) of coastline around China; (2) evaluating the feasibility and performance of sea-land segmentation by comparing the accuracy assessment, time complexity, spatial complexity and stability of state-of-the-art DCNNs methods; (3) choosing the most suitable semantic segmentation model for sea-land segmentation in accordance with Akaike information criterion (AIC) and Bayesian information criterion (BIC) model selection. Results show that the average test accuracy achieves over 99% accuracy, and the mean Intersection over Unions (mean IoU) is above 92%. These findings demonstrate that the Fully Convolutional DenseNet (FC-DenseNet) performs better than other state-of-the-art methods in sea-land segmentation, based on both AIC and BIC. Considering training time efficiency, DeeplabV3+ performs better for sea-land segmentation. The sea-land segmentation benchmark dataset is available at: https://pan.baidu.com/s/1BlnHiltOLbLKe4TG8lZ5xg..
机译:从光学卫星自动提取海岸线是沿海测绘的基础,而海陆分割是海岸线提取的核心技术。近年来,深度卷积神经网络(DCNN)在语义分割方面表现良好。但是,由于缺乏基准数据集和决定使用哪种语义分割模型的困难,使用深度学习技术进行海陆分割仍然是一项艰巨的任务。我们通过深度学习技术中的语义分割为Landsat-8 OLI图像提供了海陆分割的比较框架。研究了三个问题:(1)使用Landsat-8陆地陆地成像仪(OLI)图像构建海陆基准数据集,该图像由18,000 km(2)的中国海岸线组成; (2)通过比较最新的DCNNs方法的准确性,时间复杂性,空间复杂性和稳定性来评估海域分割的可行性和性能; (3)根据Akaike信息准则(AIC)和贝叶斯信息准则(BIC)模型选择,选择最适合的海域语义分割模型。结果表明,平均测试准确度达到了99%以上的准确度,并且工会的平均交集(平均IoU)高于92%。这些发现表明,基于AIC和BIC,Fully Convolutional DenseNet(FC-DenseNet)在海陆分割方面的表现要优于其他最新方法。考虑到训练时间效率,DeeplabV3 +在海陆分割方面表现更好。有关海陆分割基准数据集,请访问:https://pan.baidu.com/s/1BlnHiltOLbLKe4TG8lZ5xg。

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