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Fast unsupervised deep fusion network for change detection of multitemporal SAR images

机译:快速无监督深度融合网络,用于多时相SAR图像的变化检测

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In this paper, a fast unsupervised deep fusion framework for change detection of multitemporal synthetic aperture radar (SAR) images is presented. It mainly aim at generating a difference image (DI) in the feature learning procedure by stacked auto-encoders (SAES). Stacked auto-encoders, as one kind of deep neural network, can learn feature maps that retain the structural information but suppress the noise in the SAR images, which will be beneficial for DI generation. Compared with shallow network, the proposed framework can extract more available features, and be favorable for getting better change results. Different with other common deep neural networks, our proposed method does not need labeled data to train the network. In addition, we find a subset of the entire samples that appropriately represent the whole dataset to speed up the training of the deep neural network without under-fitting. Moreover, we design a fusion network structure that can combine ratio operator based method to ensure that the representations of higher layers are better than that of the lower ones. To summarize, the main contribution of our work lies in using of deep fusion network for generation of DI in a fast and unsupervised way. Experiments on four real SAR images confirm that our network performs better than traditional ratio methods and convolutional neural network. (C) 2018 Elsevier B.V. All rights reserved.
机译:本文提出了一种用于多时相合成孔径雷达(SAR)图像变化检测的快速无监督深度融合框架。它的主要目的是通过堆叠自动编码器(SAES)在特征学习过程中生成差异图像(DI)。堆叠式自动编码器作为一种深度神经网络,可以学习保留结构信息但抑制SAR图像中噪声的特征图,这将对DI生成很有帮助。与浅层网络相比,该框架可以提取更多可用特征,有利于获得更好的变更结果。与其他常见的深度神经网络不同,我们提出的方法不需要标记数据来训练网络。此外,我们找到了整个样本的一个子集,可以适当地代表整个数据集,从而加快了深度神经网络的训练速度,而不会出现拟合不足的情况。此外,我们设计了一种融合网络结构,可以结合基于比率算子的方法,以确保较高层的表示优于较低层的表示。总而言之,我们工作的主要贡献在于使用深度融合网络以快速,无监督的方式生成DI。对四个真实SAR图像进行的实验证实,我们的网络性能优于传统的比率方法和卷积神经网络。 (C)2018 Elsevier B.V.保留所有权利。

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