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个人信息Personal Information
副教授
硕士生导师
性别:女
毕业院校:大连理工大学
学位:博士
所在单位:信息与通信工程学院
学科:信号与信息处理
办公地点:海山楼B513
电子邮箱:maxr@dlut.edu.cn
Deep Supervised and Contractive Neural Network for SAR Image Classification
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论文类型:期刊论文
发表时间:2017-04-01
发表刊物:IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING
收录刊物:SCIE、EI、Scopus
卷号:55
期号:4
页面范围:2442-2459
ISSN号:0196-2892
关键字:Contractive autoencoder (AE); deep neural network (DNN); supervised classification; synthetic aperture radar (SAR) image
摘要:The classification of a synthetic aperture radar (SAR) image is a significant yet challenging task, due to the presence of speckle noises and the absence of effective feature representation. Inspired by deep learning technology, a novel deep supervised and contractive neural network (DSCNN) for SAR image classification is proposed to overcome these problems. In order to extract spatial features, a multiscale patch-based feature extraction model that consists of gray level-gradient co-occurrence matrix, Gabor, and histogram of oriented gradient descriptors is developed to obtain primitive features from the SAR image. Then, to get discriminative representation of initial features, the DSCNN network that comprises four layers of supervised and contractive autoencoders is proposed to optimize features for classification. The supervised penalty of the DSCNN can capture the relevant information between features and labels, and the contractive restriction aims to enhance the locally invariant and robustness of the encoding representation. Consequently, the DSCNN is able to produce effective representation of sample features and provide superb predictions of the class labels. Moreover, to restrain the influence of speckle noises, a graph-cut-based spatial regularization is adopted after classification to suppress misclassified pixels and smooth the results. Experiments on three SAR data sets demonstrate that the proposed method is able to yield superior classification performance compared with some related approaches.