On Automatic Target Recognition (ATR) using Inverse Synthetic Aperture Radar Images

T. Sudarson Rama Perumal, G. Gaurav, V. L. Helen Josephine, R. Joshua Samuel Raj
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Abstract

Inverse Synthetic Aperture Radar (ISAR) is used to image sea surface targets during day/night and all-weather capabilities for applications such as coastal surveillance, ship self-defense, suppression of drug trafficking etc. Hence automating classification of ships by means of machine learning methods has become more significant. Typical classification approaches consist of pre-processing, feature extraction and processing by classifiers. Image processing techniques are applied for pre-processing ISAR images. Transformation invariant features are then extracted to which classifiers such as SVM, Neural Networks (NNs) are applied The performance of these algorithms depend on the manually chosen features and is trained to perform well for different target profiles. The target image (profile of target) varies depending on the target type, aspect angle and motion introduced due to different sea states. In addition, Deep learning methods are also being explored for classification of ships. The challenge is to classify ships for different sea conditions and image acquisition parameters with limited database and processing resource.
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基于逆合成孔径雷达图像的自动目标识别(ATR)
逆合成孔径雷达(ISAR)用于白天/夜间对海面目标成像,并具有全天候能力,可用于海岸监视,船舶自卫,打击贩毒等应用。因此,利用机器学习方法实现船舶自动分类变得更加重要。典型的分类方法包括预处理、特征提取和分类器处理。应用图像处理技术对ISAR图像进行预处理。然后提取变换不变特征,并应用分类器(如SVM、神经网络(nn))。这些算法的性能取决于手动选择的特征,并经过训练以在不同的目标轮廓上表现良好。由于海况的不同,目标类型、角度和运动的不同,目标图像(目标轮廓)也不同。此外,深度学习方法也正在探索用于船舶分类。在有限的数据库和处理资源下,如何根据不同的海况和图像采集参数对船舶进行分类是一个挑战。
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