A Hybrid Model Based on Inception Network and Conditional Random Fields for SAR Image Segmentation

Yinyin Jiang, Ming Li, Peng Zhang, X. Tan, Beibei Li
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Abstract

Convolutional neural network (CNN) has been acknowledged as an effective tool in the image process. However, CNN with the single-scale convolutional kernels has limited ability to segment synthetic aperture radar (SAR) image with complex scenes. To overcome the problem, a hybrid model, named Inception-CRF model, is proposed, which composes of Inception network and conditional random fields (CRF) model. Firstly, Inception network enlarges the width of the network by setting several parallel convolution operations. Thus, the multi-scale features, which contain various representations and are beneficial for preserving the structure information, are extracted for constructing the pixel-wise unary potential. Secondly, to make full use of the context information, the spatial correlations are constructed as pairwise potential, which is robust against speckle. Finally, the spatial correlations and multi-scale features are incorporated into the posterior distribution to capture information more comprehensively. Experiments on the simulated and real images demonstrate the effectiveness of Inception-CRF model in SAR image segmentation.
基于初始网络和条件随机场的SAR图像分割混合模型
卷积神经网络(CNN)已被公认为图像处理的有效工具。然而,基于单尺度卷积核的CNN对复杂场景合成孔径雷达(SAR)图像的分割能力有限。为了克服这一问题,提出了一种由Inception网络和条件随机场(conditional random field, CRF)模型组成的混合模型——Inception-CRF模型。首先,Inception网络通过设置多个并行卷积操作来扩大网络的宽度。因此,提取包含多种表示且有利于保存结构信息的多尺度特征,用于构建逐像素一元势。其次,为了充分利用上下文信息,将空间相关性构建为两两势,对散斑具有较强的鲁棒性;最后,将空间相关性和多尺度特征融合到后验分布中,以更全面地捕获信息。仿真和真实图像实验验证了Inception-CRF模型在SAR图像分割中的有效性。
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