Multiple Vessel Detection in Harsh Maritime Environments

IF 0.7 4区 工程技术 Q4 ENGINEERING, OCEAN Marine Technology Society Journal Pub Date : 2022-10-14 DOI:10.4031/mtsj.56.5.07
D. Duarte, M. Pereira, A. Pinto
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Abstract

Abstract Recently, research concerning the navigation of autonomous surface vehicles (ASVs) has been increasing. However, a large-scale implementation of these vessels is still held back by several challenges such as multi-object tracking. Attaining accurate object detection plays a big role in achieving successful tracking. This article presents the development of a detection model with an image-based Convolutional Neural Network trained through transfer learning, a deep learning technique. To train, test, and validate the detector module, data were collected with the SENSE ASV by sailing through two nearby ports, Leixões and Viana do Castelo, and recording video frames through its on-board cameras, along with a Light Detection And Ranging, GPS, and Inertial Measurement Unit data. Images were extracted from the collected data, composing a manually annotated dataset with nine classes of different vessels, along with data from other open-source maritime datasets. The developed model achieved a class mAP@[.5 .95] (mean average precision) of 89.5% and a clear improvement in boat detection compared to a multi-purposed state-of-the-art detector, YOLO-v4, with a 22.9% and 44.3% increase in the mAP with an Intersection over Union threshold of 50% and the mAP@[.5 .95], respectively. It was integrated in a detection and tracking system, being able to continuously detect nearby vessels and provide sufficient information for simple navigation tasks.
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恶劣海上环境下的多船检测
摘要近年来,对自动水面车辆(asv)导航的研究日益增多。然而,这些船只的大规模实施仍然受到多目标跟踪等挑战的阻碍。获得准确的目标检测是实现成功跟踪的重要因素。本文介绍了一种基于图像的卷积神经网络检测模型的开发,该模型通过迁移学习(一种深度学习技术)进行训练。为了训练、测试和验证探测器模块,SENSE ASV通过附近的两个港口Leixões和Viana do Castelo收集数据,并通过其机载摄像机记录视频帧,以及光探测和测距、GPS和惯性测量单元的数据。从收集的数据中提取图像,与来自其他开源海事数据集的数据一起,组成一个包含九类不同船只的手动注释数据集。所开发的模型实现了类映射@[。5.95](平均精度)为89.5%,与最先进的多用途探测器YOLO-v4相比,船舶检测方面有明显改善,mAP的交叉点超过联合阈值为50%,mAP@的交叉点超过联合阈值为22.9%和44.3%。5.95]。它被集成在探测和跟踪系统中,能够持续探测附近的船只,并为简单的导航任务提供足够的信息。
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来源期刊
Marine Technology Society Journal
Marine Technology Society Journal 工程技术-工程:大洋
CiteScore
1.70
自引率
0.00%
发文量
83
审稿时长
3 months
期刊介绍: The Marine Technology Society Journal is the flagship publication of the Marine Technology Society. It publishes the highest caliber, peer-reviewed papers, six times a year, on subjects of interest to the society: marine technology, ocean science, marine policy, and education.
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