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SAR image change detection based on deep denoising and CNN

机译:基于深度降噪和CNN的SAR图像变化检测

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摘要

The intrinsic noise of synthetic aperture radar (SAR) images has a big influence to the image processing performance, especially in change detection (CD). Image denoising is an important branch of image restoration which aims at enhancing the quality of images. The detection accuracy of CD depends greatly on the quality of red difference image (DI), therefore image denoising can be regarded as a vital step in SAR CD. However, few researches focused on this problem. In this study, an end-to-end deep denoising model is first designed to remove the noise of SAR images. With the help of abundant simulated SAR images, deep denoising model is trained effectively to estimate the noise component. Then clean image can be achieved by removing this noise component from the original SAR image. After denoising, the new image pair will generate a clean DI. At last, DI is classified into changed and unchanged areas by a three-layer Convolutional Neural Network (CNN). Three real SAR image pairs demonstrate the effectiveness of the proposed method.
机译:合成孔径雷达(SAR)图像的固有噪声对图像处理性能有很大影响,尤其是在变化检测(CD)中。图像降噪是图像恢复的重要分支,旨在提高图像质量。 CD的检测精度在很大程度上取决于红差图像(DI)的质量,因此图像去噪可被视为SAR CD中至关重要的一步。但是,很少有研究集中在这个问题上。在这项研究中,首先设计了端到端的深度降噪模型以消除SAR图像的噪声。借助丰富的模拟SAR图像,可以有效地训练深度降噪模型以估计噪声分量。然后,可以通过从原始SAR图像中删除此噪声分量来获得清晰的图像。去噪后,新的图像对将生成干净的DI。最后,通过三层卷积神经网络(CNN)将DI分为变化和不变区域。三个真实的SAR图像对证明了该方法的有效性。

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