基于目标深度学习的高分辨率遥感光学卫星船舶检测

Bill Van Ricardo Zalukhu, Arie Wahyu Wijayanto, Muhammad Iqbal Habibie
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引用次数: 2

摘要

海洋船只被认为是用于海上运输的主要工具之一,它也可以用作中间工具,为许多其他与海洋有关的活动提供服务。在跟踪和监测这些船舶的活动时,船舶目标的自动检测从复杂的海水背景中提取船舶的数量和位置无疑是一个挑战。在本研究中,我们在ShipRSImageNet大规模数据集上构建了基于YOLOv5x6的单阶段网络深度学习模型。在50个船类中,我们的模型获得了很好的性能,平均精度为75.18%。我们的研究结果可能有助于支持海上安全执法政策,包括打击非法渔业和管理海水交通监控。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Marine Vessels Detection on Very High-Resolution Remote Sensing Optical Satellites using Object-Based Deep Learning
Marine vessels or ships have been considered one of the primary vehicles used for sea transportation, which can also be used as an intermediary tool to serve numerous other marine-related activities. In tracking and monitoring the activities of these ships, automatic vessel object detection is undoubtedly challenging to extract the number and position of the vessels from complex seawater backgrounds. In this study, we build a one-stage network of YOLOv5x6 based deep learning model on ShipRSImageNet large-scale dataset. With 50 ship categories, our model obtained a promising performance with a mean average precision of 75.18%. Our findings are potentially beneficial to support maritime security enforcement policy including counter-measuring illegal fisheries and managing seawater traffic surveillance.
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