...
首页> 外文期刊>Journal of advanced transportation >Video-Based Detection Infrastructure Enhancement for Automated Ship Recognition and Behavior Analysis
【24h】

Video-Based Detection Infrastructure Enhancement for Automated Ship Recognition and Behavior Analysis

机译:基于视频的自动船舶识别和行为分析的检测基础设施增强

获取原文

摘要

Video-based detection infrastructure is crucial for promoting connected and autonomous shipping (CAS) development, which provides critical on-site traffic data for maritime participants. Ship behavior analysis, one of the fundamental tasks for fulfilling smart video-based detection infrastructure, has become an active topic in the CAS community. Previous studies focused on ship behavior analysis by exploring spatial-temporal information from automatic identification system (AIS) data, and less attention was paid to maritime surveillance videos. To bridge the gap, we proposed an ensemble you only look once (YOLO) framework for ship behavior analysis. First, we employed the convolutional neural network in the YOLO model to extract multi-scaled ship features from the input ship images. Second, the proposed framework generated many bounding boxes (i.e., potential ship positions) based on the object confidence level. Third, we suppressed the background bounding box interferences, and determined ship detection results with intersection over union (IOU) criterion, and thus obtained ship positions in each ship image. Fourth, we analyzed spatial-temporal ship behavior in consecutive maritime images based on kinematic ship information. The experimental results have shown that ships are accurately detected (i.e., both of the average recall and precision rate were higher than 90%) and the historical ship behaviors are successfully recognized. The proposed framework can be adaptively deployed in the connected and autonomous vehicle detection system in the automated terminal for the purpose of exploring the coupled interactions between traffic flow variation and heterogeneous detection infrastructures, and thus enhance terminal traffic network capacity and safety.
机译:基于视频的检测基础设施对于促进连接和自主运输(CAS)开发至关重要,这为海上参与者提供了关键的现场交通数据。船舶行为分析是满足基于智能视频的检测基础设施的基本任务之一,已成为CA社区的活动主题。以前的研究专注于通过探索自动识别系统(AIS)数据(AIS)数据的空间信息来分析,并且对海上监控视频报告不太关注。要弥补差距,我们提出了一个只有一次(Yolo)船舶行为分析框架的合奏。首先,我们在YOLO模型中使用了卷积神经网络,从输入船舶图像中提取多尺度船舶功能。其次,所提出的框架基于对象置信水平产生许多限定盒(即,潜在船舶位置)。第三,我们抑制了背景边界盒干扰,并确定了与联盟(iou)标准的交叉点的船舶检测结果,从而获得了每个船舶图像中的船位置。第四,我们在基于运动船信息的连续海上图像中分析了空间临时船舶行为。实验结果表明,船舶被精确地检测到(即,平均召回和精密率均高于90%),并且成功地识别历史船舶行为。所提出的框架可以在自动终端中的连接和自主车辆检测系统中自适应地部署,以探索交通流量变化和异构检测基础设施之间的耦合相互作用,从而提高终端业务网络容量和安全性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号