雷达目标分类的数据驱动方法分析

COMPEL Pub Date : 2024-02-21 DOI:10.1108/compel-11-2023-0576
Aysu Coşkun, Sándor Bilicz
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引用次数: 0

摘要

目的本研究侧重于利用雷达截面(RCS)对形状各异的目标进行分类,而雷达截面会受到目标形状的影响。本研究旨在通过考虑具有微小随机波动的入射角,并使用物理光学模拟来生成数据集,从而开发出一种稳健的分类方法。设计/方法/途径该方法涉及多种有监督的机器学习和分类方法,包括传统算法和深度神经网络分类器。它使用基于直方图的 RCS 定义进行特征提取,重点是 RCS 数据中的抗噪声能力。研究结果对分类算法进行了广泛评估,强调了它们在从 RCS 直方图中提取特征方面的功效。在所研究的算法中,K-近邻算法是最准确的传统方法,但其准确性被深度学习网络分类器所超越。研究结果证明了从 RCS 直方图中提取特征的鲁棒性,这也是毫米波雷达应用的动机所在。它还采用了数据丰富技术来加强分析,为使用 RCS 进行目标检测提供了一个全面的视角。
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Analysis of data-driven approaches for radar target classification

Purpose

This study focuses on the classification of targets with varying shapes using radar cross section (RCS), which is influenced by the target’s shape. This study aims to develop a robust classification method by considering an incident angle with minor random fluctuations and using a physical optics simulation to generate data sets.

Design/methodology/approach

The approach involves several supervised machine learning and classification methods, including traditional algorithms and a deep neural network classifier. It uses histogram-based definitions of the RCS for feature extraction, with an emphasis on resilience against noise in the RCS data. Data enrichment techniques are incorporated, including the use of noise-impacted histogram data sets.

Findings

The classification algorithms are extensively evaluated, highlighting their efficacy in feature extraction from RCS histograms. Among the studied algorithms, the K-nearest neighbour is found to be the most accurate of the traditional methods, but it is surpassed in accuracy by a deep learning network classifier. The results demonstrate the robustness of the feature extraction from the RCS histograms, motivated by mm-wave radar applications.

Originality/value

This study presents a novel approach to target classification that extends beyond traditional methods by integrating deep neural networks and focusing on histogram-based methodologies. It also incorporates data enrichment techniques to enhance the analysis, providing a comprehensive perspective for target detection using RCS.

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