SAR image target recognition via deep Bayesian generative network

D. Guo, Bo Chen
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引用次数: 6

Abstract

In this letter, a novel deep-leaming-based feature selection method based on Poisson Gamma Belief Network (PGBN), is proposed to extract multi-layer feature from SAR images data. As a deep Bayesian generative network, PGBN has the ability to extract a multilayer structured representation from the complex SAR images owing to the existence of Poisson likelihood and multilayer gamma hidden variables, at the same time the PGBN can be viewed as a deep non-negative matrix factorization model. Note that the PGBN model is an unsupervised deep generative network and it fails to make full use of the label information in training stage. Therefore, the NBPGBN model is further proposed to obtain a higher recognition performance and training efficiency based on Naïve Bayes rule. The experimental results on MSTAR dataset show that the feature extracted by this new approach has better structured information and perform better classification result compared with some related algorithms.
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基于深度贝叶斯生成网络的SAR图像目标识别
本文提出了一种基于泊松伽玛信念网络(Poisson Gamma Belief Network, PGBN)的基于深度学习的特征选择方法,用于从SAR图像数据中提取多层特征。PGBN作为一种深度贝叶斯生成网络,由于泊松似然和多层伽玛隐变量的存在,具有从复杂SAR图像中提取多层结构化表示的能力,同时PGBN可以看作是一种深度非负矩阵分解模型。需要注意的是,PGBN模型是一个无监督的深度生成网络,在训练阶段未能充分利用标签信息。因此,我们进一步提出了基于Naïve贝叶斯规则的NBPGBN模型,以获得更高的识别性能和训练效率。在MSTAR数据集上的实验结果表明,与一些相关算法相比,该方法提取的特征具有更好的结构化信息,分类效果更好。
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