基于卫星图像的卷积神经网络海事船舶检测

J. Alghazo, A. Bashar, Ghazanfar Latif, Mohammed Zikria
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引用次数: 4

摘要

在目前全球贸易和商业处于顶峰的情况下,为船舶的安全和保障而有效监测和控制海上交通的重要性再怎么强调也不为过。劫持船只、非法捕鱼、侵犯海上边界、非法交换海上货物、事故和军事袭击等严重海上问题引起各方关注。这需要一个自动化、准确、快速和强大的海洋监测系统,以避免或减轻此类问题的负面影响。本文提出、实现并评估了一种基于CNN的深度学习模型,该模型可以从卫星图像中准确识别船舶。两个具有不同架构的模型CNN Model 1和CNN Model 2在空客卫星图像数据集上进行了训练、验证和测试。分类精度和损失函数都是通过改变epoch的个数来衡量的。同时,通过测量训练时间对两种模型的复杂度进行比较。本文的结论是,就其在空客数据集上的性能而言,所提出的模型具有自动、快速和准确的特点,最高准确率达到89.7%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Maritime Ship Detection using Convolutional Neural Networks from Satellite Images
The significance of efficient monitoring and control of marine traffic for the purpose of safety and security of the ships cannot be overemphasized in the current scenario where global trade and commerce is at its pinnacle. Various stakeholders are concerned with serious maritime issues related to hijacking of ships, illegal fishing, encroachments of sea borders, and illicit exchange of sea cargo, accidents, and military attacks. This requires an automated, accurate, fast, and robust sea monitoring system which can avoid or mitigate the negative effects of such issues. This paper proposes, implements, and evaluates a CNN based deep learning model which can accurately identify ships from the images captured from satellite images. Two models CNN Model 1 and CNN Model 2 having different architectures are trained, validated, and tested on the Airbus satellite images dataset. Both classification accuracy and loss functions are measured by varying the number of the epochs. Also, the complexity comparison of the two models is performed by measuring the training time. The paper concludes that the proposed models are automatic, fast and accurate in terms of their performance on the Airbus dataset by achieving a maximum accuracy of 89.7%.
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