A Feasibility Analysis of the Use of ISAR Training Data in Machine Learning-Based SAR ATR

E. Yiğit, S. Demirci, Umut Özkaya
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Abstract

Processing of synthetic aperture radar (SAR) images for automatic target recognition (ATR) is a critical application especially in military surveillance. In particular, numerous machine learning-based SAR ATR methods have been proposed for this task. However, data training and testing stages of all these methods are based on the exploitation of SAR signatures of the target under investigation. Considering the high variability of radar targets, obtaining such signature data is obviously a costly and time consuming process. In this study, therefore, a feasibility analysis of the use of inverse-SAR (ISAR) training data in SAR ATR has been made for the first time. The turntable ISAR and circular SAR images of three different vehicles are used in training and testing is performed by means of SAR images of three similar targets within the publicly available MSTAR dataset. Also, three most prominent machine learning methods, namely KNN, SVM and ANN are used in conjunction with three different feature extraction algorithms namely, GLRLM, GLSZM and GLCM. The obtained results reveal that the GLCM+SVM algorithm pair is the most effective model with 85% accuracy.
在基于机器学习的合成孔径雷达自动跟踪中使用 ISAR 训练数据的可行性分析
处理合成孔径雷达(SAR)图像以进行目标自动识别(ATR)是一项重要应用,尤其是在军事监控领域。针对这一任务,人们提出了许多基于机器学习的合成孔径雷达自动目标识别(ATR)方法。然而,所有这些方法的数据训练和测试阶段都是基于对调查目标的合成孔径雷达特征的利用。考虑到雷达目标的高变异性,获取此类特征数据显然是一个既费钱又费时的过程。因此,本研究首次对在合成孔径雷达自动跟踪器中使用反合成孔径雷达(ISAR)训练数据进行了可行性分析。训练中使用了三种不同飞行器的转盘 ISAR 和圆形 SAR 图像,测试则通过公开的 MSTAR 数据集中三个类似目标的 SAR 图像进行。此外,KNN、SVM 和 ANN 这三种最著名的机器学习方法与 GLRLM、GLSZM 和 GLCM 这三种不同的特征提取算法结合使用。结果显示,GLCM+SVM 算法对是最有效的模型,准确率高达 85%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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