基于传统和深度学习方法的卫星图像融合

M. Hammad, Tarek A. Mahmoud, A. Amein, Tarek S. Ghoniemy
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引用次数: 0

摘要

在基于深度学习的遥感卫星图像融合中,由于对地面真实度的需求日益增长,已经提出了许多方法。在这些方法中,Wald的协议是最常用的。本文提出了一种新的工作流,主要由两个部分组成。第一部分的目标是利用预先设计并经过良好测试的混合传统融合方法的结果获得真实图像。该方法结合了Gram-Schmidt和curvelet变换技术,得到了准确可靠的融合结果。第二部分着重于利用第一阶段提供的丰富和信息丰富的数据对所提出的深度学习模型进行训练,以提高融合性能。所演示的深度学习模型依赖于一系列残差密集块来增强网络深度并促进有效的特征学习过程。这些模块被设计用于捕获低级和高级信息,使模型能够从输入数据中提取复杂的细节和有意义的特征。在无参考的情况下,采用峰值信噪比和质量等7个指标对该模型进行了性能评价。实验结果表明,该方法在图像质量方面优于目前最先进的方法。它还显示了所提议的方法的健壮性和强大的性质,该方法有可能应用于农业、环境监测和变化检测中的许多遥感应用。
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Satellite Image Fusion Using a Hybrid Traditional and Deep Learning Method
Due to growing demand for ground-truth in deep learning-based remote sensing satellite image fusion, numerous approaches have been presented. Of these approaches, Wald’s protocol is the most commonly used. In this paper, a new workflow is proposed consisting of two main parts. The first part targets obtaining the ground-truth images using the results of a pre-designed and well-tested hybrid traditional fusion method. This method combines the Gram–Schmidt and curvelet transform techniques to generate accurate and reliable fusion results. The second part focuses on the training of a proposed deep learning model using rich and informative data provided by the first stage to improve the fusion performance. The demonstrated deep learning model relies on a series of residual dense blocks to enhance network depth and facilitate the effective feature learning process. These blocks are designed to capture both low-level and high-level information, enabling the model to extract intricate details and meaningful features from the input data. The performance evaluation of the proposed model is carried out using seven metrics such as peak-signal-to-noise-ratio and quality without reference. The experimental results demonstrate that the proposed approach outperforms state-of-the-art methods in terms of image quality. It also exhibits the robustness and powerful nature of the proposed approach which has the potential to be applied to many remote sensing applications in agriculture, environmental monitoring, and change detection.
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来源期刊
Geomatics and Environmental Engineering
Geomatics and Environmental Engineering Earth and Planetary Sciences-Computers in Earth Sciences
CiteScore
2.30
自引率
0.00%
发文量
27
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