Although deep learning-based methods have achieved excellent performance on
SAR ATR, the fact that it is difficult to acquire and label a lot of SAR images
makes these methods, which originally performed well, perform weakly. This may
be because most of them consider the whole target images as input, but the
researches find that, under limited training data, the deep learning model
can't capture discriminative image regions in the whole images, rather focus on
more useless even harmful image regions for recognition. Therefore, the results
are not satisfactory. In this paper, we design a SAR ATR framework under
limited training samples, which mainly consists of two branches and two
modules, global assisted branch and local enhanced branch, feature capture
module and feature discrimination module. In every training process, the global
assisted branch first finishes the initial recognition based on the whole
image. Based on the initial recognition results, the feature capture module
automatically searches and locks the crucial image regions for correct
recognition, which we named as the golden key of image. Then the local extract
the local features from the captured crucial image regions. Finally, the
overall features and local features are input into the classifier and
dynamically weighted using the learnable voting parameters to collaboratively
complete the final recognition under limited training samples. The model
soundness experiments demonstrate the effectiveness of our method through the
improvement of feature distribution and recognition probability. The
experimental results and comparisons on MSTAR and OPENSAR show that our method
has achieved superior recognition performance