Machine Learning Techniques for Intrusion Detection of Fishermen and Trespassing into Foreign Seas

S. S, Anuharshini B, Charanya A G, H. S, Preethika P, S. M
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引用次数: 0

Abstract

Issues regarding trespassing and intrusion of fishermen in the maritime boundary line is of great importance to be discussed nowadays. One of the main reasons still existing is transgression for better catch of fishes in foreign waters. Thus is a concern, and in order to prevent this issue from becoming a national security threat, it should be taken care of, by identifying the intruders as the first step to get a better view on the situation. Finally, in the hope to slim the chances of transgressions by marine fisher folk, a SVM model based on Automated Identification System that makes use of real-world data is implemented that will analyse the possibility of successful detection of intrusions of fisherman by categorising the vessel as normal or anomalous one. Convolution Neural Network model is used to find whether it is ship or not a ship, and if it is ship then it will categorize whether it belongs to anomalous or non-anomalous. The model's validation accuracy of 96% shows that it can correctly identify whether a ship is present in each image.
渔民入侵检测与外海入侵的机器学习技术
渔民擅闯海洋边界线问题是当今讨论的一个重要问题。其中仍然存在的主要原因之一是为了更好地在外国水域捕捞鱼类而进行的违法行为。因此,这是一个令人担忧的问题,为了防止这个问题成为国家安全威胁,应该通过识别入侵者作为更好地了解情况的第一步来解决这个问题。最后,为了减少海洋渔民越界的机会,我们实现了一个基于自动识别系统的支持向量机模型,该模型利用真实世界的数据,通过将船只分类为正常或异常船只来分析成功检测渔民入侵的可能性。使用卷积神经网络模型来判断是否是船舶,如果是船舶,则对其进行异常和非异常分类。该模型的验证精度为96%,表明该模型可以正确识别每幅图像中是否存在船舶。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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