Many-target, Many-sensor Ship Tracking and Classification

Leonard Kosta, John Irvine, Laura Seaman, H. Xi
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Abstract

Government agencies such as DARPA wish to know the numbers, locations, tracks, and types of vessels moving through strategically important regions of the ocean. We implement a multiple hypothesis testing algorithm to simultaneously track dozens of ships with longitude and latitude data from many sensors, then use a combination of behavioral fingerprinting and deep learning techniques to classify each vessel by type. The number of targets is unknown a priori. We achieve both high track purity and high classification accuracy on several datasets.
多目标、多传感器舰船跟踪与分类
美国国防部高级研究计划局(DARPA)等政府机构希望了解在具有战略意义的海洋区域航行的船只的数量、位置、轨迹和类型。我们实现了一种多重假设检验算法,利用来自多个传感器的经纬度数据同时跟踪数十艘船舶,然后结合使用行为指纹和深度学习技术,按类型对每艘船舶进行分类。目标的数量是先验未知的。我们在多个数据集上实现了高轨道纯度和高分类精度。
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