A Novel Approach for Recognition and Identification of Low-Level Flight Military Aircraft using Naive Bayes Classifier and Information Fusion

A. D. W. Sumari, Afifah Millatina Nugraheni, Y. Yunhasnawa
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引用次数: 2

Abstract

A problem that has been faced by the Radar is if the aircraft flies at low level or near to the surface so its coming in the aerial-surveillance airspace cannot be detected and endangers the air sovereignty. The aircraft can be recognized and identified by carrying out a technique called Visual Aircraft Recognition (VACR) using a binocular. This technique requires military personnel that has capability carrying out the air surveillance from the ground. Surveillance is a time-consuming and tiring task so it can cause fatigue and impact to the results of the recognition and identification. To cope with this problem, we have designed and implemented a novel recognition and identification method using the combination of Naive Bayes Classifier (NBC) and information fusion. By using a dataset that consists of 45 military aircrafts, 35 civilian aircrafts, 40 military helicopters, and 35 civilian helicopters with 80:20 dataset distribution for the training scheme and the validation one, we obtained the recognition accuracy of 87.1%. We also found that the recognition and identification process can be speeded up 1.2 seconds when using information fusion.
一种基于朴素贝叶斯分类器和信息融合的低空军用飞机识别方法
雷达一直面临的一个问题是,如果飞机在低空或接近地面飞行,那么它进入空中监视空域无法被发现,从而危及空中主权。这架飞机可以通过使用双筒望远镜进行视觉飞机识别(VACR)来识别和识别。这种技术需要有能力从地面执行空中监视的军事人员。监测是一项费时费力的工作,因此会造成疲劳并影响识别和鉴定的结果。为了解决这一问题,我们设计并实现了一种将朴素贝叶斯分类器(NBC)与信息融合相结合的识别方法。使用45架军用飞机、35架民用飞机、40架军用直升机和35架民用直升机组成的数据集进行训练方案和验证方案,数据集分布为80:20,识别准确率达到87.1%。我们还发现,使用信息融合可以使识别和识别过程加快1.2秒。
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