Ship classification based on trajectory data with machine-learning methods

Paul Kraus, C. Mohrdieck, F. Schwenker
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引用次数: 21

Abstract

Determining the type of a vessel solely by trajectory data is a desirable capability with many potential applications, however it is also a nontrivial task. In this paper, various machine-learning techniques are combined to train a model which is able to achieve this goal. In order to acquire training data, Automatic Identification System (AIS) messages collected from terrestrial and satellite base stations have been converted into ship trajectories including corresponding ship types. Since AIS is error-prone, preprocessing is applied to prepare the trajectories and remove errors from the dataset. Subsequently, we introduce a new set of features which contains behavioural and geographical properties, as well as daytime context information. Based on the generated features, a classification algorithm is trained to distinguish between five types of vessels: Cargo, Tanker, Passenger, Fishing and Other. Additionally, the influence of vessel dimensions as discriminative features is analyzed.
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基于轨迹数据的船舶分类与机器学习方法
在许多潜在的应用中,仅通过轨迹数据来确定船舶的类型是一种理想的能力,但这也是一项艰巨的任务。本文结合多种机器学习技术来训练一个能够实现这一目标的模型。为了获取训练数据,从地面和卫星基站收集的自动识别系统(AIS)电文被转换成包括相应船型在内的船舶轨迹。由于AIS容易出错,因此应用预处理来准备轨迹并从数据集中去除错误。随后,我们引入了一组新的特征,其中包含行为和地理属性,以及白天的上下文信息。基于生成的特征,训练分类算法来区分五种类型的船只:货轮、油轮、客轮、渔船和其他。此外,还分析了容器尺寸作为判别特征的影响。
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