School of Navigation, Wuhan University of Technology, Wuhan 430063, China.
National Engineering Research Center for Water Transport Safety, Wuhan 430063, China.
Sensors (Basel). 2019 Mar 15;19(6):1317. doi: 10.3390/s19061317.
In order to monitor and manage vessels in channels effectively, identification and tracking are very necessary. This work developed a maritime unmanned aerial vehicle (Mar-UAV) system equipped with a high-resolution camera and an Automatic Identification System (AIS). A multi-feature and multi-level matching algorithm using the spatiotemporal characteristics of aerial images and AIS information was proposed to detect and identify field vessels. Specifically, multi-feature information, including position, scale, heading, speed, etc., are used to match between real-time image and AIS message. Additionally, the matching algorithm is divided into two levels, point matching and trajectory matching, for the accurate identification of surface vessels. Through such a matching algorithm, the Mar-UAV system is able to automatically identify the vessel's vision, which improves the autonomy of the UAV in maritime tasks. The multi-feature and multi-level matching algorithm has been employed for the developed Mar-UAV system, and some field experiments have been implemented in the Yangzi River. The results indicated that the proposed matching algorithm and the Mar-UAV system are very significant for achieving autonomous maritime supervision.
为了有效监测和管理航道中的船舶,识别和跟踪是非常必要的。本工作开发了一种配备高分辨率摄像机和自动识别系统(AIS)的海上无人机(Mar-UAV)系统。提出了一种利用航空图像和 AIS 信息的时空特征的多特征和多层次匹配算法,以检测和识别现场船舶。具体来说,使用位置、比例、航向、速度等多种特征信息在实时图像和 AIS 消息之间进行匹配。此外,匹配算法分为点匹配和轨迹匹配两个层次,以准确识别水面船舶。通过这种匹配算法,Mar-UAV 系统能够自动识别船舶的视觉,从而提高无人机在海上任务中的自主性。该多特征和多层次匹配算法已应用于开发的 Mar-UAV 系统,并在扬子江进行了一些现场实验。结果表明,所提出的匹配算法和 Mar-UAV 系统对于实现自主海上监管具有重要意义。