基于k-means SMOTE和深度残差网络的非平衡雷达微动目标分类

Xiaoyi Wang, Shuhao Zhang, Y. Zhang, Zhongjun Yu
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引用次数: 0

摘要

在基于深度学习的雷达目标分类的实际应用中,存在雷达数据集不完整、不平衡等问题,使得深度学习难以发挥其优势。针对这些问题,提出了一种基于k均值SMOTE和深度残差网络的非平衡雷达微动目标分类方法。首先,针对实践中采集到的各种目标样本的不平衡性,为了充分利用目标的微运动特征,提出了K-means SMOTE算法对训练数据集进行优化和平衡。然后,以ResNeXt101网络为核心结构,基于残差网络实现微动雷达目标的精确分类。最后,基于实测雷达目标数据,进行了实验验证。实验结果表明,与传统的深度学习直接对象分类方法相比,本文提出的算法能够更有效地解决数据不平衡问题,实现更高的分类精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Imbalanced radar micro-motion target classification based on k-means SMOTE and deep residual network
In the practical application of radar target classification based on deep learning, there are problems such as incomplete and imbalanced radar datasets making it difficult for deep learning to leverage its advantages. Based on these problems, an imbalanced radar micro-motion target classification method based on k-means SMOTE and deep residual network is proposed. Firstly, based on the imbalance of various target samples collected in practice, in order to make full use of the micro-motion features of targets, the K-means SMOTE algorithm is proposed to optimize and balance training datasets. Then, accurate classification of micro-motion radar targets is achieved based on the residual network, which uses the ResNeXt101 network as the core structure. Finally, based on measured radar target data, experimental verification is conducted. The experimental results show that compared to traditional deep learning direct object classification methods, the algorithm proposed in this paper can more effectively address the problem of data imbalance and achieve higher classification accuracy.
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