Volume 21 Issue 5
Nov.  2021
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Article Contents
HUANG Liang, ZHANG Zhi-hao, WEN Yuan-qiao, ZHU Man, HUANG Ya-min. Stopping behavior recognition and classification of ship based on trajectory characteristics[J]. Journal of Traffic and Transportation Engineering, 2021, 21(5): 189-198. doi: 10.19818/j.cnki.1671-1637.2021.05.016
Citation: HUANG Liang, ZHANG Zhi-hao, WEN Yuan-qiao, ZHU Man, HUANG Ya-min. Stopping behavior recognition and classification of ship based on trajectory characteristics[J]. Journal of Traffic and Transportation Engineering, 2021, 21(5): 189-198. doi: 10.19818/j.cnki.1671-1637.2021.05.016

Stopping behavior recognition and classification of ship based on trajectory characteristics

doi: 10.19818/j.cnki.1671-1637.2021.05.016
Funds:

National Key Research and Development Program of China 2018YFC1407405

National Natural Science Foundation of China 41801375

National Natural Science Foundation of China 51679180

National Natural Science Foundation of China 51709218

More Information
  • Author Bio:

    HUANG Liang(1986-), male, associate professor, PhD, leung.huang@whut.edu.cn

  • Received Date: 2021-04-15
    Available Online: 2021-11-13
  • Publish Date: 2021-10-01
  • To estimate stopping activities of ships from massive trajectory data accurately, a two-stage strategy was established to extract stop points from ship trajectories, and an automatic characteristic-based ship stopping behavior recognition and classification method was also proposed. By taking the distance, time and number of points as the constraint conditions, a rule model was constructed to detect the candidate stop trajectories from the raw trajectories. The isolation forest algorithm was applied for the abnormal outliers detection and elimination. A set of highly clustered ship stop trajectories was extracted. Based on the spatio-temporal characteristics of ship berthing and anchoring. Three indices, including the repetition rate of trajectory point, mean distance between neighboring points, and distance between the farthest point pair, were defined to establish a new trajectory similarity measurement model. Then, the distribution characteristics and aggregation degree of ship stop trajectory points were quantitatively evaluated, and the K-nearest neighbor algorithm was then used to automatically classify the berthing and anchoring behaviors of ships. The proposed method was applied to the ship trajectory data collected from three different waters. The classification results of ship stopping behaviors were obtained accurately. The differences in spatio-temporal characteristics of ship anchoring and berthing were verified. The accuracies of recognition and classification of ship stopping behaviors were assessed with the help of manually annotated results. Research results indicate that the repetition rate of trajectory points for ship berthing is more than 80%. The distance between the furthest point pair and the mean distance between neighboring points are 6-11 and 1-2 m, respectively. The repetition rate of trajectory points for ship anchoring is less than 10%. The distance between the furthest point pair and the mean distance between neighboring points are 150-250 and 8-10 m, respectively. Thus, the three spatio-temporal characteristics, including the repetition rate of trajectory point, mean distance between neighboring points, and distance between the farthest point pair have a significant ability to distinguish the ship berthing and anchoring. The recognition and classification accuracy of the proposed method reaches up to 98%. Therefore, its effectiveness is fully proved. With the help of the proposed model, the spatial positions of existing docks and anchorages can be updated. Abnormal ship stops outside the regular waters or abnormal ship stops for prolonged periods inside the regular waters can be recognized automatically. The stopping distribution in ports can be monitored, and the popular docks and anchorages in different times and seasons can be known. In this way, the port planning layout and traffic organization can be optimized. 3 tabs, 7 figs, 31 refs.

     

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