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Neural-Network-Based Classification of Commercial Ships From Multi-Influence Passive Signatures

机译:基于神经网络的商业船舶分类来自多影响被动签名

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摘要

Monitoring the underwater environment is important for maritime security, marine conservation, and mine countermeasures. With developments in computation and artificial intelligence, it is increasingly important to measure and classify underwater ship signatures. In this work, we design an artificial neural network that classifies commercial ships based on their multi-influence signature. In total, 103 ship passages were included in the considered data set, with signatures recorded as the ship crossed a line of passive underwater sensors. The multi-influence signature was formed by feature-level sensor fusion of the hydroacoustic signature, the underwater electric potential, and the static and alternating magnetic signatures. Ships were classified according to size, or type, as broadcast on the AIS. With feature-level fusion, the neural network will optimize the relationship between different types of signatures, emphasizing features with greater predictive power. At the same time, weak features, even if not independently adequate for classification, can add information that improves accuracy further. The developed neural network achieved a classification accuracy of 87.4% when classifying according to size. With augmented data to balance the classes, 85.0% classification accuracy was achieved when classifying according to ship type. This is a large improvement on the found classification accuracy when using only hydroacoustic or electromagnetic signatures. This article verifies the value of feature-level sensor fusion in classification, and provides guidance on classifier design depending on the exact ship classification task.
机译:监测水下环境对于海上安全,海洋保护和矿山对策很重要。随着计算和人工智能的发展,衡量和分类水下船只签名越来越重要。在这项工作中,我们设计了一个人工神经网络,其基于其多影响签名来分类商业船舶。总共包括103艘船舶段落中的被认为数据集中,随着船舶越过一系列被动水下传感器而录制的签名。通过水声签名,水下电位和静态和交流磁性的特征级传感器融合来形成多影响特征。根据AIS上的广播,船舶按大小或类型分类。通过特征级融合,神经网络将优化不同类型签名之间的关系,强调具有更高预测力的特征。同时,弱功能,即使没有独立充足的分类,也可以添加更多提高准确性的信息。根据尺寸分类,开发的神经网络在分类时实现了87.4%的分类精度。通过增强数据来平衡课程,根据船舶类型进行分类时,可以实现85.0%的分类准确性。在仅使用水声或电磁签名时,这是对发现的分类准确性的大大改进。本文验证了分类中特征级传感器融合的值,并根据确切的船舶分类任务提供了对分类器设计的指导。

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