Classification of Military Aircraft in Real-time Radar Systems based on Supervised Machine Learning with Labelled ADS-B Data

Kaeye Dästner, Susie Brunessaux, Elke Schmid, Bastian von Hassler zu Roseneckh-Köhler, F. Opitz
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引用次数: 5

Abstract

Air surveillance is usually based on real-time radar tracking systems, which are able to provide object positions, kinematics and a short time history. Due to the density of the air picture, air traffic controllers normally focus on the actual object kinematics and the full identities of each object, which is received from secondary radars and ADS-B. However air surveillance systems in the military domain need additional information on objects classification and identification, since ADS-B of non-cooperative targets are not available. Hence flight characteristics and moving patterns are used as evidence for a military aircraft, which unfortunately are not often recognizable easily in real-time by an operator. This paper describes dedicated machine learning techniques that are trained with ADS-B data to predict military targets. The classifiers can be used within real-time systems.
基于标签ADS-B数据的监督式机器学习实时雷达系统军用飞机分类
空中监视通常基于实时雷达跟踪系统,该系统能够提供目标位置、运动学和短时间历史。由于空中图像的密度,空中交通管制员通常专注于从二次雷达和ADS-B接收到的实际物体运动学和每个物体的完整身份。然而,军事领域的空中监视系统需要关于目标分类和识别的额外信息,因为没有非合作目标的ADS-B。因此,飞行特征和运动模式被用作军用飞机的证据,不幸的是,操作员通常不容易实时识别。本文描述了用ADS-B数据训练的专用机器学习技术,以预测军事目标。分类器可以在实时系统中使用。
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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