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Automatic ship target classification based on aerial images

机译:基于航拍图像的舰船目标自动分类

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摘要

As the important reconnaissance and offensive weapon in future battlefield, Micro Aerial Vehicle (MAV) is applied more and more widely in civil and military field. In the sea battlefield, ship classification applied to MAV could effectively realize signals collection, force protection and strike to ship targets. At present, methods of ship classification are mostly based on signals from radar, infrared or ultrasonic. However, because of large volume and complex equipments, these methods can't meet the requirement of MAV. Thus, ship classification based on visible sensor is chosen and it could solve volume and weight limits, of MAV. In order to realize ship classification in MAV, ship classification based on aerial images is first proposed and an effective robust algorithm for classification based on modified Zernike moment invariants is proposed in this paper. The task of classification is that the ships are classified into two categories, aircraft carrier and chaser. The experimental results show that the correct classification rate is more than 92% and the algorithm proposed is effective to solve classification problem for ship targets in MAV.
机译:作为未来战场上重要的侦察和进攻武器,微型飞行器(MAV)在民用和军事领域得到越来越广泛的应用。在海上战场上,应用于MAV的舰船分类可以有效地实现信号收集,部队保护和对舰目标的打击。目前,船只的分类方法主要是基于来自雷达,红外或超声波的信号。但是,由于体积大,设备复杂,这些方法不能满足MAV的要求。因此,选择了基于可见传感器的船舶分类,它可以解决MAV的体积和重量限制。为了实现MAV中的船舶分类,首先提出了基于航拍图像的船舶分类,并提出了一种基于改进的Zernike矩不变式的有效鲁棒分类算法。分类的任务是将船舶分为两类,航空母舰和追逐者。实验结果表明,正确的分类率大于92%,所提出的算法对于解决MAV中舰船目标的分类问题是有效的。

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