Change Detection in SAR Images through Clustering Fusion Algorithm and Deep Neural Networks

Zhikang Lin, Wei Liu, Yulong Wang, Yan Xu, C. Niu
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Abstract

The detection of changes in synthetic aperture radar (SAR) images based on deep learning has been widely used in landslides detection, flood disaster monitoring, and other fields of change detection due to its high classification accuracy. However, the inherent speckle noise in SAR images restricts the performance of existing SAR image change detection algorithms by clustering analysis. Therefore, this paper proposes a novel method for SAR image change detection based on clustering fusion and deep neural networks. We first used hierarchical fuzzy c-means clustering (HFCM ) to process two different images to obtain HFCM classification results. Then a fusion strategy is designed to obtain the fused image from the two HFCM classified images as the pre-classification result. Furthermore, a lightweight deep neural network com posed of a decomposition convolution module and an auxiliary classification module was proposed; the former module could reduce network parameters by 28%, and the latter could reduce network parameters by 33.3%. To improve the recognition performance of the network, the classification layer was replaced by the regression layer at the outcome of the network. By comparing the experiments of different methods on five data sets, the performance of our proposed method is superior.
基于聚类融合算法和深度神经网络的SAR图像变化检测
基于深度学习的合成孔径雷达(SAR)图像变化检测因其分类精度高,已广泛应用于滑坡检测、洪涝灾害监测等变化检测领域。然而,SAR图像中固有的散斑噪声限制了现有聚类分析SAR图像变化检测算法的性能。为此,本文提出了一种基于聚类融合和深度神经网络的SAR图像变化检测新方法。我们首先使用层次模糊c均值聚类(HFCM)对两幅不同的图像进行处理,得到HFCM分类结果。然后设计一种融合策略,从两幅HFCM分类图像中获得融合图像作为预分类结果。在此基础上,提出了一种由分解卷积模块和辅助分类模块组成的轻量级深度神经网络;前者可将网络参数降低28%,后者可将网络参数降低33.3%。为了提高网络的识别性能,在网络的输出处用回归层代替分类层。通过对不同方法在5个数据集上的实验对比,我们提出的方法具有较好的性能。
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