用于泛锐化的多尺度双边注意力融合网络

Zhongyuan Guo;Jiawei Li;Jia Lei;Jinyuan Liu;Shihua Zhou;Bin Wang;Nikola K. Kasabov
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引用次数: 0

摘要

高分辨率多光谱(HRMS)图像结合了来自全色(PAN)和低分辨率多光谱(LRMS)图像的空间和光谱信息。泛色锐化技术性能良好,被广泛用于获取 HRMS 图像。然而,大多数平锐化方法都是通过直接插值来确定 PAN 和 LRMS 图像的比例,这可能会引入伪影并扭曲融合结果的颜色。为解决这一问题,我们提出了一种无监督渐进式平锐化框架 MSBANet,它采用多阶段融合策略。每个阶段都包含一个注意力交互提取模块(AIEM)和一个多尺度双边融合模块(MBFM)。注意力互动提取模块从输入图像中提取空间和光谱特征,并捕捉特征之间的相关性。MBFM 可以有效整合来自 AIEM 的信息,提高 MSBANet 的上下文感知能力。我们设计了一种混合损失函数,可增强融合网络存储光谱和纹理细节的能力。在对四个数据集进行的定性和定量实验研究中,MSBANet 的表现优于最先进的平锐化技术。代码即将发布。
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Multiscale Bilateral Attention Fusion Network for Pansharpening
High-resolution multispectral (HRMS) images combine spatial and spectral information originating from panchromatic (PAN) and reduced-resolution multispectral (LRMS) images. Pansharpening performs well and is widely used to obtain HRMS images. However, most pansharpening approaches determine the ratio of PAN and LRMS images through direct interpolation, which may introduce artifacts and distort the color of the fused results. To address this issue, an unsupervised progressive pansharpening framework, MSBANet, is proposed, which adopts a multistage fusion strategy. Each stage contains an attention interactive extraction module (AIEM) and a multiscale bilateral fusion module (MBFM). The AIEM extracts spatial and spectral features from input images and captures the correlations between features. The MBFM can efficiently integrate information from the AIEM and improve MSBANet context awareness. We design a hybrid loss function that enhances the ability of the fusion network to store spectral and texture details. In qualitative and quantitative experimental studies on four datasets, MSBANet outperformed state-of-the-art pansharpening techniques. The code will be released.
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