Physics-Based Automatic Recognition of Small Features Located in Highly Similar Structures With Electromagnetic Scattering Data

IF 1.8 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE Journal on Multiscale and Multiphysics Computational Techniques Pub Date : 2022-11-09 DOI:10.1109/JMMCT.2022.3220716
Zi-Liang Liu;Chao-Fu Wang
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引用次数: 1

Abstract

A physics-based automatic target recognition (ATR) technique is developed to accurately identify small features located in highly similar structures with electromagnetic (EM) scattering data. Automatic target recognition is important due to its widely practical applications. The traditional ATR is usually based on images produced from EM scattering data and sophisticated algorithms. Wideband angular and frequency sweeps are necessary to generate sufficient EM scattering data to produce images with high resolution for the imagery-based ATR to obtain correct recognition results, especially for multiscale structures with small local features. These seriously limit the efficiency of the imagery-based ATR and its practicability. To implement ATR more efficiently, we turn to the physics-based ATR and employ principal component analysis (PCA). The physics-based ATR with PCA can exactly classify objects of different types with one-frequency scattering data and avoid expensive frequency sweeps. However, the pre-existing average feature center (AFC) criterion model for PCA in the literature can only distinguish objects with significant differences and fails to recognize small features located in highly similar structures. Hence, an improved classification criterion for PCA is proposed to precisely identify highly similar structures with different small features. Some numerical examples illustrate the satisfactory performance of the proposed technique.
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基于物理的电磁散射数据高度相似结构中的小特征自动识别
开发了一种基于物理的自动目标识别(ATR)技术,以利用电磁散射数据准确识别位于高度相似结构中的小特征。目标自动识别由于其广泛的实际应用而具有重要意义。传统的ATR通常基于EM散射数据和复杂算法产生的图像。宽带角度和频率扫描对于生成足够的EM散射数据以产生具有高分辨率的图像是必要的,用于基于图像的ATR以获得正确的识别结果,特别是对于具有小局部特征的多尺度结构。这些严重限制了基于图像的ATR的效率及其实用性。为了更有效地实现ATR,我们转向基于物理的ATR,并采用主成分分析(PCA)。基于物理的ATR和PCA可以用一个频率的散射数据准确地对不同类型的物体进行分类,并避免昂贵的频率扫描。然而,文献中已有的PCA平均特征中心(AFC)标准模型只能区分具有显著差异的对象,无法识别位于高度相似结构中的小特征。因此,提出了一种改进的PCA分类准则,以精确识别具有不同小特征的高度相似结构。数值算例表明,该方法具有令人满意的性能。
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来源期刊
CiteScore
4.30
自引率
0.00%
发文量
27
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