TY - JOUR
T1 - A novel lightweight SARNet with clock-wise data amplification for SAR ATR
AU - Zhai, Yikui
AU - Deng, Wenbo
AU - Zhu, Yanqing
AU - Xu, Ying
AU - Sun, Bing
AU - Li, Jingwen
AU - Ke, Qirui
AU - Zhi, Yihang
AU - Pirui, Vincenzo
N1 - Publisher Copyright:
© 2019, Electromagnetics Academy. All rights reserved.
PY - 2019
Y1 - 2019
N2 - Convolutional Neural Network (CNN) models applied to synthetic aperture radar automatic target recognition (SAR ATR) universally focus on two important issues: overfitting caused by lack of sufficient training data and independent variations like worse estimates of the aspect angle, etc. To this end, we developed a lightweight CNN-based method named SARNet to accomplish the classification task. Firstly, a clock-wise data amplification approach is presented to generate adequate SAR images without requiring many raw SAR images, effectively avoiding overfitting in the course of training. Then a SARNet is devised to process the extracted features from SAR target images and work on classification tasks with parameters fine-tuning under comparative models. To enhance and structurally organize the representation of learned proposed model, various activation functions are explored in this paper. Furthermore, due to the pioneering conducted experiments, training samples in the MSTAR and extended MSTAR database are utilized to demonstrate the robustness and effectiveness of the lightweight model. Experimental results have shown that our proposed model has achieved a 98.30% state-of-the-art accuracy.
AB - Convolutional Neural Network (CNN) models applied to synthetic aperture radar automatic target recognition (SAR ATR) universally focus on two important issues: overfitting caused by lack of sufficient training data and independent variations like worse estimates of the aspect angle, etc. To this end, we developed a lightweight CNN-based method named SARNet to accomplish the classification task. Firstly, a clock-wise data amplification approach is presented to generate adequate SAR images without requiring many raw SAR images, effectively avoiding overfitting in the course of training. Then a SARNet is devised to process the extracted features from SAR target images and work on classification tasks with parameters fine-tuning under comparative models. To enhance and structurally organize the representation of learned proposed model, various activation functions are explored in this paper. Furthermore, due to the pioneering conducted experiments, training samples in the MSTAR and extended MSTAR database are utilized to demonstrate the robustness and effectiveness of the lightweight model. Experimental results have shown that our proposed model has achieved a 98.30% state-of-the-art accuracy.
UR - https://www.scopus.com/pages/publications/85065296952
U2 - 10.2528/PIERC18120305
DO - 10.2528/PIERC18120305
M3 - 文章
AN - SCOPUS:85065296952
SN - 1937-8718
VL - 91
SP - 69
EP - 82
JO - Progress in Electromagnetics Research C
JF - Progress in Electromagnetics Research C
ER -