雷达目标识别的多尺度卷积和特征加权网络

Chenchen Wang, W. Su, Hong Gu, Jianchao Yang
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引用次数: 0

摘要

目标识别是合成孔径雷达最重要的应用之一。然而,由于雷达数据量的持续快速增长,仅靠人类的努力是无法取得令人满意的结果的。鉴于卷积神经网络(CNN)在光学图像分类任务中的巨大成功,本文采用一种改进的CNN来提高分类精度。与简单地堆叠几个卷积层、池化层和激活层来构建一个结构不同,设计了一个将三种不同形式的卷积组合在一起的模块来提高特征提取能力。考虑到SAR图像组成的复杂性,单比例尺特征图不能充分描述目标。此外,为了利用特征的相关性,设计了一个额外的模块来测量特征的权重,并对下一阶段的输入进行预处理。在运动和静止目标采集与识别数据集上进行了实验。该方法的平均准确率为98%,最高准确率为99.67%,与现有方法相比,证明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-scale Convolution and Feature-weighting Network for Radar Target Recognition
Target recognition is one of the most significant applications of synthetic aperture radar (SAR). However, satisfactory results are impractical to achieve by human effort alone due to the continual and rapid growth of the quantity of radar data. In view of the great success of convolutional neural networks (CNNs) in optical image classification tasks, in this paper, we apply a modified CNN to improve the classification accuracy. Instead of simply stacking several convolutional, pooling and activation layers to build a structure, a module that groups three different forms of convolution is designed to improve the feature extraction ability. Considering the complexity of SAR image composition, targets are not adequately described with single-scale feature maps. In addition, to utilize the correlation of features, an extra module is designed to measure the weights of the features and preprocess the input of the next stage. Experiments are performed on a moving and stationary target acquisition and recognition dataset. The proposed method achieves an average accuracy of 98% and a maximum accuracy of 99.67%, which demonstrates its efficiency compared with existing methods.
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