Crush0416 / Fea-DA---Unknown-SAR-Target-IdentificationLinks
This is a novel unknown sar target identification method based on feature extraction networks and KLD-RPA joint discrimination. Experiment results form MSTAR dataset shows that our proposed Fea-DA achieves state of the art unknown sar target identification accuracy while maintaining the high recognition accuracy of known target.
☆13Updated 3 years ago
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