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A deep neural network learning-based speckle noise removal technique for enhancing the quality of synthetic-aperture radar images

机译:基于深度神经网络学习的散斑噪声清除技术,用于提高合成孔径雷达图像的质量

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The speckle noise present in synthetic-aperture radar (SAR) images is responsible for hindering the extraction of the exact information that needs to be utilized for potential remote sensing applications. Thus the quality of SAR images needs to be enhanced by removing speckle noise in an effective manner. In this paper, A Deep Neural Network-based Speckle Noise Removal Technique (DNN-SNRT) is proposed that utilizes the benefits of convolution and Long Short Term Memory-based neural networks to enhance the quality of SAR images. The proposed DNN-SNRT uses multiple radar intensity images that are archived from the specific area of interest to facilitate the self-learning of the intensity features derived from the image patches. The proposed DNN-SNRT incorporates a dual neural network to remove speckle noise and flexibly estimates the thresholds and weights to achieve an effective SAR image quality improvement. The proposed DNN-SNRT is capable of automatically updating the intensity features of SAR images during the training process. Experimental investigation of the proposed DNN-SNRT conducted based on TerraSAR-X images confirmed the superior enhancement of image quality over comparable recent filters. The results of the DNN-SNRT scheme were also proved that it is able to reduce noise and preserve edges during the image quality enhancement process.
机译:合成孔径雷达(SAR)图像中存在的斑点噪声负责阻碍需要用于潜在遥感应用的确切信息的提取。因此,通过以有效方式去除斑点噪声,需要增强SAR图像的质量。在本文中,提出了一种深度神经网络的斑点噪声去除技术(DNN-SNRT),利用卷积和基于短期内存的神经网络的益处来提高SAR图像的质量。所提出的DNN-SNRT使用从特定的感兴趣区域归档的多个雷达强度图像,以便于从图像斑块导出的强度特征的自学习。建议的DNN-SNRT包括双神经网络,以删除散斑噪声,灵活地估计阈值和权重,以实现有效的SAR图像质量改进。所提出的DNN-SNRT能够在训练过程中自动更新SAR图像的强度特征。基于Terrasar-X图像进行的建议DNN-SNRT的实验研究证实了在可比较的最近过滤器上的图像质量的优越增强。还证明了DNN-SNRT方案的结果,即在图像质量增强过程中能够降低噪声并保持边缘。

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