基于船舶位置数据的渔船类型识别

Shengmao Zhang, Jiaze Zhang, Kaiyang Pei, Xianfeng Tang, J. Hou, Fenghua Tang, Shenglong Yang, Heng Zhang
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引用次数: 1

摘要

渔船作业类型是渔业资源捕捞和管理的重要参数。以东海和黄海近海机动渔船为研究对象,使用2018年北斗船舶监测系统(VMS)定位数据。根据帆布载网渔船的作业特点对数据进行过滤提取,绘制渔船的轨迹图。在此基础上,提出一种基于迁移学习的渔船分类方法。该方法以VGG16作为基本网络,以ImageNet数据集上训练好的参数作为初始权值,以预处理后的特征轨迹图作为网络的输入。通过对模型的训练,可以获得帆布拖网渔船和其他渔船的精度。实验结果表明,该模型对54120次有效航次中的4974次帆布载净航次进行了分类。最终准确率为91.8%,其中帆网渔船的召回率为91.9%,其他类型渔船的召回率为91.8%。为渔船作业类型的识别提供了一种新的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fishing Vessel Type Recognition Based on Ship Position Data
The type of fishing vessel operation is an important parameter for the fishing and management of fishery resources. The offshore motor fishing vessels in the East China Sea and the Yellow Sea were taken as the object of the research, and the BeiDou Vessel Monitoring System (VMS) position data from 2018 of these objects were used. The data is filtered and extracted according to the operating characteristics of the canvas stow net fishing vessel, and the trajectory map of the fishing vessel is drawn. On this basis, a fishing vessel classification method based on migration learning is proposed. This method uses VGG16 as the basic network, uses the parameters that have been trained on the ImageNet data set as the initial weights, and uses the preprocessing feature trajectory map as input of the network. Through training the model, the accuracy of the canvas stow net fishing boat and other fishing boats can be obtained. The experimental results show that the model classifies 4,974 canvas stow net voyages out of 54,120 effective voyages. The final accuracy rate was 91.8%, of which the recall rate of sailing net fishing boats was 91.9%, and the recall rate of other types of fishing boats was 91.8%. It provides a new solution for the identification of fishing vessel operation types.
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