Abstract

Automatic target recognition (ATR) in synthetic aperture radar (SAR) images has been widely used in civilian and military fields. Traditional model-based methods and template matching methods do not work well under extended operating conditions (EOCs), such as depression angle variant, configuration variant, and noise corruption. To improve the recognition performance, methods based on convolutional neural networks (CNN) have been introduced to solve such problems and have shown outstanding performance. However, most of these methods rely on continuously increasing the width and depth of networks. This adds a large number of parameters and computational overhead, which is not conducive to deployment on edge devices. To solve these problems, a novel lightweight fully convolutional neural network based on Channel-Attention mechanism, Channel-Shuffle mechanism, and Inverted-Residual block, namely the ASIR-Net, is proposed in this paper. Specifically, we deploy Inverted-Residual blocks to extract features in high-dimensional space with fewer parameters and design a Channel-Attention mechanism to distribute different weights to different channels. Then, in order to increase the exchange of information between channels, we introduce the Channel-Shuffle mechanism into the Inverted-Residual block. Finally, to alleviate the matter of the scarcity of SAR images and strengthen the generalization performance of the network, four approaches of data augmentation are proposed. The effect and generalization performance of the proposed ASIR-Net have been proved by a lot of experiments under both SOC and EOCs on the MSTAR dataset. The experimental results indicate that ASIR-Net achieves higher recognition accuracy rates under both SOC and EOCs, which is better than the existing excellent ATR methods.

Highlights

  • synthetic aperture radar (SAR) can work stably for a long time in harsh environments, and can provide highquality images for earth observation, so that it has been used in the national defense construction and national economy widely, such as marine monitoring system, ship target recognition, mineral exploration, precision agriculture, etc

  • Target recognition under different combat conditions is more complicated in the real battlefield situation, so it is very necessary to measure the generalization ability of the proposed ASIR-Net under extended operating conditions (EOCs)

  • FCNN: It can be seen from the first and second rows of Table 10 that the performance can be improved, and the number of parameters can be greatly reduced, after the fully connected layers are replaced with the 1 × 1 convolutional layers because the fully connected layers have a large number of parameters, which is easy to cause over-fitting problems

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Summary

Introduction

SAR can work stably for a long time in harsh environments, and can provide highquality images for earth observation, so that it has been used in the national defense construction and national economy widely, such as marine monitoring system, ship target recognition, mineral exploration, precision agriculture, etc. Unlike commom optical images, the unipolar gray-scale SAR image has blurred edges and strong anisotropy owing to the imaging mechanism, speckle noise, and background clutter. These characteristics will affect the effective feature extraction and automatic target recognition (ATR) [1,2]. A great number of different methods are applied in the field of SAR ATR in the past few decades. Those methods consist of model-based methods and template matching methods. The template matching method [3,4] is to generate a template database from training images according to manually designed rules, and every test image is compared to the template database and match the most similar template

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