Abstract
Since Synthetic Aperture Radar (SAR) targets are full of coherent speckle noise, the traditional deep learning models are difficult to effectively extract key features of the targets and share high computational complexity. To solve the problem, an effective lightweight Convolutional Neural Network (CNN) model incorporating transfer learning is proposed for better handling SAR targets recognition tasks. In this work, firstly we propose the Atrous-Inception module, which combines both atrous convolution and inception module to obtain rich global receptive fields, while strictly controlling the parameter amount and realizing lightweight network architecture. Secondly, the transfer learning strategy is used to effectively transfer the prior knowledge of the optical, non-optical, hybrid optical and non-optical domains to the SAR target recognition tasks, thereby improving the model’s recognition performance on small sample SAR target datasets. Finally, the model constructed in this paper is verified to be 97.97% on ten types of MSTAR datasets under standard operating conditions, reaching a mainstream target recognition rate. Meanwhile, the method presented in this paper shows strong robustness and generalization performance on a small number of randomly sampled SAR target datasets.
Highlights
Synthetic Aperture Radar (SAR) features all-weather, long-range and large-scale detection performance
In order to demonstrate the performance of the algorithm on SAR target recognition tasks, unified experimental verification performed using the MSTAR
In order to demonstrate the performance of the algorithm on SAR target recognition tasks, unified experimental verification is performed using the MSTAR dataset
Summary
Synthetic Aperture Radar (SAR) features all-weather, long-range and large-scale detection performance. It can obtain high-resolution radar images under extremely low-visibility weather conditions, effectively identify ground camouflage and masking targets and is widely used in marine environment detection, terrain survey and military target recognition field. Recognition (ATR) is a crucial technique for interpreting SAR target images, which can effectively improve the utilization efficiency of SAR targets images [1]. Based on the imaging characteristics of SAR target images, researchers have conducted a lot of research on the SAR ATR algorithm. Traditional SAR target recognition methods mainly concentrate
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