Fishing Vessels Activity Detection from Longitudinal AIS Data

Saeed Arasteh, M. A. Tayebi, Zahra Zohrevand, U. Glässer, A. Shahir, Parvaneh Saeedi, H. Wehn
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引用次数: 11

Abstract

The impact of marine life on the oceans of our planet is undeniable and overfishing is a serious threat to marine ecosystems worldwide. Maritime domain awareness calls for continuous monitoring and tracking of fisheries using data from maritime intelligence sources to detect illegal fishing activities. Marine traffic data from vessel tracking services is a promising source for identifying, locating, and capturing vessel information. Given the volume of such data, manual processing is impossible, raising an immediate need for autonomous and smart systems to follow the footprints of vessels and detect their activity types in near real-time. To achieve this goal, we propose FishNET, a simple yet effective convolutional neural network (CNN) model for vessel trajectory classification. The model is trained using a set of invariant spatiotemporal feature sequences extracted from the behavioral characteristics of vessel movements. While existing approaches present point-based classification models, in this paper we not only discuss that a segment-based classification model has more realistic real-world applications but also show, by using expert-labelled data, that FishNET outperforms state-of-the-art fishing activity detection models. Our method does not require information about the fishing vessels type or type of fishing gear which is deployed. To show applications in taking action against illegal fishing, we apply the trained model on large real-world but unlabelled fishing vessel data from the U.S. and Denmark gathered over a period of four years. In this analysis, we show how FishNET can contribute to managing fisheries by learning more about spatiotemporal fishing effort distribution, and to law enforcement agencies by detecting unreported and underreported fishing effort of individual vessels.
基于纵向AIS数据的渔船活动检测
海洋生物对地球海洋的影响是不可否认的,过度捕捞是对全球海洋生态系统的严重威胁。海洋领域意识要求利用海洋情报来源的数据持续监测和跟踪渔业,以发现非法捕鱼活动。来自船舶跟踪服务的海上交通数据是识别、定位和捕获船舶信息的一个有前途的来源。考虑到此类数据的数量,人工处理是不可能的,因此迫切需要自动和智能系统来跟踪船只的足迹并近乎实时地检测其活动类型。为了实现这一目标,我们提出了FishNET,这是一种简单而有效的卷积神经网络(CNN)模型,用于船舶轨迹分类。该模型使用一组从血管运动的行为特征中提取的不变时空特征序列进行训练。虽然现有的方法是基于点的分类模型,但在本文中,我们不仅讨论了基于片段的分类模型具有更现实的现实应用,而且还通过使用专家标记的数据表明,FishNET优于最先进的捕鱼活动检测模型。我们的方法不需要关于所部署的渔船类型或渔具类型的信息。为了展示在打击非法捕鱼行动中的应用,我们将训练过的模型应用于四年来收集的来自美国和丹麦的大型真实世界但未标记的渔船数据。在本分析中,我们展示了FishNET如何通过更多地了解捕捞努力量的时空分布,为渔业管理做出贡献,并通过发现个别船只未报告和少报的捕捞努力量,为执法机构做出贡献。
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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