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A Novel Cost Function for Despeckling using Convolutional Neural Networks

机译:卷积神经网络去斑点的新型成本函数

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Removing speckle noise from SAR images is still an open issue. It is well know that the interpretation of SAR images is very challenging and despeckling algorithms are necessary to improve the ability of extracting information. An urban environment makes this task more heavy due to different structures and to different objects scale. Following the recent spread of deep learning methods related to several remote sensing applications, in this work a convolutional neural networks based algorithm for despeckling is proposed. The network is trained on simulated SAR data. The paper is mainly focused on the implementation of a cost function that takes account of both spatial consistency of image and statistical properties of noise.
机译:从SAR图像中去除斑点噪声仍然是一个未解决的问题。众所周知,SAR图像的解释非常具有挑战性,去斑点算法对于提高提取信息的能力是必需的。由于不同的结构和不同的对象比例,城市环境使这项任务变得更加繁重。随着近来与几种遥感应用有关的深度学习方法的广泛传播,在这项工作中,提出了一种基于卷积神经网络的去斑点算法。该网络针对模拟SAR数据进行了训练。本文主要关注成本函数的实现,该函数考虑了图像的空间一致性和噪声的统计特性。

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