遥感泛锐化的动态交叉特征融合

Xiao Wu, Tingzhu Huang, Liang-Jian Deng, Tian-Jing Zhang
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引用次数: 35

摘要

深度卷积神经网络已被用于泛锐化,并取得了最先进的性能。然而,现有的大部分工作主要集中在单尺度特征融合上,尽管网络足够深度,但未能充分考虑高层语义与低层特征之间的信息关系。本文提出了一种用于泛锐化的动态交叉特征融合网络(DCFNet)。具体来说,DCFNet包含多个并行分支,其中一个高分辨率分支作为主干,低分辨率分支逐步补充到主干。因此,我们的DCFNet可以很好地表示整体信息。为了增强分支间的关系,将动态交叉特征转移嵌入到多个分支中以获得高分辨率表示。然后学习情境化特征,提高信息的融合。实验结果表明,DCFNet在定量指标和视觉质量上都明显优于现有技术。
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Dynamic Cross Feature Fusion for Remote Sensing Pansharpening
Deep Convolution Neural Networks have been adopted for pansharpening and achieved state-of-the-art performance. However, most of the existing works mainly focus on single-scale feature fusion, which leads to failure in fully considering relationships of information between high-level semantics and low-level features, despite the network is deep enough. In this paper, we propose a dynamic cross feature fusion network (DCFNet) for pansharpening. Specifically, DCFNet contains multiple parallel branches, including a high-resolution branch served as the backbone, and the low-resolution branches progressively supplemented into the backbone. Thus our DCFNet can represent the overall information well. In order to enhance the relationships of inter-branches, dynamic cross feature transfers are embedded into multiple branches to obtain high-resolution representations. Then contextualized features will be learned to improve the fusion of information. Experimental results indicate that DCFNet significantly outperforms the prior arts in both quantitative indicators and visual qualities.
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