posted on 2018-05-29, 13:46authored byFei Gao, Yue Yang, Jun Wang, Jinping Sun, Erfu Yang, Huiyu Zhou
Synthetic aperture radar automatic target recognition (SAR-ATR) has made great progress
in recent years. Most of the established recognition methods are supervised, which have strong
dependence on image labels. However, obtaining the labels of radar images is expensive and time
consuming. In this paper, we present a semi-supervised learning method based on the standard
deep convolutional generative adversarial networks (DCGANs). We double the discriminator used
in DCGANs, and utilize the two discriminators for joint training. In this process, we introduce a
noisy data learning theory to reduce the negative impact of the incorrectly labeled samples on the
performance of the networks. We replace the last layer of the classic discriminators with the
standard softmax function to output a vector of class probabilities so that we can recognize multiple
objects. We subsequently modify the loss function in order to adapt to the revised network structure.
In our model, the two discriminators share the same generator, and we take the average value of
them when computing the loss function of the generator, which can improve the training stability
of DCGANs to some extent. We also utilize images of higher quality from the generated images for
training in order to improve the performance of the networks. Our method has achieved state-of
the-art results on the Moving and Stationary Target Acquisition and Recognition (MSTAR) dataset,
and we have proved that using the generated images to train the networks can improve the
recognition accuracy with a small number of labeled samples.
Funding
This work was supported by the National Natural Science Foundation of China
(61771027; 61071139; 61471019;61171122; 61501011; 61671035). Dr. E. Yang is supported in part by
the RSE-NNSFC Joint Project (2017–2019) (6161101383) with China University of Petroleum
(Huadong).Huiyu Zhou is supported by UK EPSRC under Grant EP/N011074/1, and Royal Society
Newton Advanced Fellowship under Grant NA160342.
History
Citation
Remote Sensing, 2018, 10(6), 846
Author affiliation
/Organisation/COLLEGE OF SCIENCE AND ENGINEERING/Department of Informatics