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首页> 外文期刊>IEEE Geoscience and Remote Sensing Letters >Transferred Deep Learning for Sea Ice Change Detection From Synthetic-Aperture Radar Images
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Transferred Deep Learning for Sea Ice Change Detection From Synthetic-Aperture Radar Images

机译:转移深度学习用于从合成孔径雷达图像检测海冰变化

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摘要

High-quality sea ice monitoring is crucial to navigation safety and climate research in the polar regions. In this letter, a transferred multilevel fusion network (MLFN) is proposed for sea ice change detection from synthetic-aperture radar (SAR) images. Considering the fact that training data are limited in the task of sea ice change detection, a large data set was used to train the MLFN, and the deep knowledge can be transferred to sea ice analysis. In addition, cascade dense blocks are employed to optimize the convolutional layers. Multilayer feature fusion is introduced to exploit the complementary information among low-, mid-, and high-level feature representations. Therefore, more discriminative feature extraction can be achieved by the MLFN. Furthermore, the fine-tune strategy is utilized to optimize the network parameters. The experimental results on two real sea ice data sets demonstrated that the proposed method achieved better performance than other competitive methods.
机译:高质量的海冰监测对于极地地区的航行安全和气候研究至关重要。在这封信中,提出了一种用于从合成孔径雷达(SAR)图像检测海冰变化的转移多级融合网络(MLFN)。考虑到训练数据在海冰变化检测任务中的局限性,使用了一个大型数据集来训练MLFN,并且可以将丰富的知识转移到海冰分析中。另外,采用级联密集块来优化卷积层。引入了多层特征融合以利用低,中和高级特征表示之间的互补信息。因此,MLFN可以实现更具区分性的特征提取。此外,微调策略用于优化网络参数。在两个真实海冰数据集上的实验结果表明,该方法比其他竞争方法具有更好的性能。

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