SAR Recognition of Target Variants Using Channel Attention Network without Dimensionality Reduction

Ji-Hoon Park, Yeonsu Choi, Daeyoung Chae, H. Lim
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Abstract

In implementing a robust automatic target recognition(ATR) system with synthetic aperture radar(SAR) imagery, one of the most important issues is accurate classification of target variants, which are the same targets with different serial numbers, configurations and versions, etc. In this paper, a deep learning network with channel attention modules is proposed to cope with the recognition problem for target variants based on the previous research findings that the channel attention mechanism selectively emphasizes the useful features for target recognition. Different from other existing attention methods, this paper employs the channel attention modules without dimensionality reduction along the channel direction from which direct correspondence between feature map channels can be preserved and the features valuable for recognizing SAR target variants can be effectively derived. Experiments with the public benchmark dataset demonstrate that the proposed scheme is superior to the network with other existing channel attention modules.
无降维信道注意网络SAR目标变体识别
在利用合成孔径雷达(SAR)图像实现鲁棒自动目标识别(ATR)系统中,目标变体的准确分类是一个重要问题,即不同序列号、构型和版本等的同一目标。本文在前人研究发现通道注意机制选择性地强调对目标识别有用的特征的基础上,提出了一种带有通道注意模块的深度学习网络来解决目标变量的识别问题。与现有的注意方法不同,本文采用了沿信道方向不降维的信道注意模块,可以保持特征映射信道之间的直接对应关系,有效地提取出对SAR目标变体识别有价值的特征。在公共基准数据集上的实验表明,该方案优于其他现有信道关注模块的网络。
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