DocumentCode :
3677630
Title :
SAR ATR based on dividing CNN into CAE and SNN
Author :
Xuan Li;Chunsheng Li;Pengbo Wang;Zhirong Men;Huaping Xu
Author_Institution :
School of Electronic and Information Engineering, BeiHang University, XueYuan Road No 37, HaiDian District, Beijing, China 100191
fYear :
2015
Firstpage :
676
Lastpage :
679
Abstract :
As for the problem of too long training time of convolution neural network (CNN), this paper proposes a fast training method for CNN in SAR automatic target recognition (ATR). The CNN is divided into two parts: one that contains all the convolution layers and sub-sampling layers is considered as convolutional auto-encoder (CAE) for unsupervised training to extract high-level features; the other that contains fully connected layers is regarded as shallow neural network (SNN) to work as a classifier. The experiment based on MSATR database shows that the proposed method can tremendously reduce the training time with little loss of recognition rate.
Keywords :
"Training","Convolution","Computer aided engineering","Synthetic aperture radar","Feature extraction","Support vector machines","Neural networks"
Publisher :
ieee
Conference_Titel :
Synthetic Aperture Radar (APSAR), 2015 IEEE 5th Asia-Pacific Conference on
Type :
conf
DOI :
10.1109/APSAR.2015.7306296
Filename :
7306296
Link To Document :
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