ReLAP-Net: Residual Learning and Attention Based Parallel Network for Hyperspectral and Multispectral Image Fusion

Aditya Agrawal, SourajaKundu, Touseef Ahmad, Manish Bhatt
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引用次数: 0

Abstract

Remote sensing applications require high-resolution images to obtain precise information about the Earth???s surface. Multispectral images have high spatial resolution but low spectral resolution. Hyperspectral images have high spectral resolution but low spatial resolution. This study proposes a residual learning and attention-based parallel network based on residual network and channel attention. The network performs image fusion of a high spatial resolution multispectral image and a low spatial resolution hyperspectral image. The network training and fusion experiments are conducted on four public benchmark data sets to show the effectiveness of the proposed model. The fusion performance is compared with classical signal processing???based image fusion techniques. Four image metrics are used for the quantitative evaluation of the fused images. The proposed network improved fusion ability by reducing the root mean square error and relative dimensionless global error in synthesis and increased the peak signal-to-noise ratio when compared to other state-of-the-art models.
ReLAP-Net:用于高光谱和多光谱图像融合的基于残差学习和注意力的并行网络
遥感应用需要高分辨率图像来获取有关地球表面的精确信息。多光谱图像具有较高的空间分辨率,但光谱分辨率较低。高光谱图像具有较高的光谱分辨率,但空间分辨率较低。本研究基于残差网络和通道注意力,提出了一种基于残差学习和注意力的并行网络。该网络可对高空间分辨率的多光谱图像和低空间分辨率的高光谱图像进行图像融合。在四个公共基准数据集上进行了网络训练和融合实验,以显示所提模型的有效性。融合性能与基于经典信号处理的图像融合技术进行了比较。融合图像的定量评估采用了四个图像指标。与其他最先进的模型相比,所提出的网络降低了合成中的均方根误差和相对无量纲全局误差,提高了峰值信噪比,从而改善了融合能力。
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