Litcius/Paper detail

Extracting Vessel Speed Based on Machine Learning and Drone Images during Ship Traffic Flow Prediction

Jiansen Zhao, Yanjun Chen, Zhenzhen Zhou, Jingying Zhao, Shengzheng Wang, Xinqiang Chen

2022Journal of Advanced Transportation24 citationsDOIOpen Access PDF

Abstract

In the water transportation, ship speed estimation has become a key subject of intelligent shipping research. Traditionally, Automatic Identification System (AIS) is used to extract the ship speed information. However, transportation environment is gradually becoming complex, especially in the busy water, leading to the loss of some AIS data and resulting in a variety of maritime accidents. To make up for this deficiency, this paper proposes a vessel speed extraction framework, based on Unmanned Aerial Vehicle (UAV) airborne video. Firstly, YOLO v4 is employed to detect the ship targets in UAV image precisely. Secondly, a simple online and real time tracking method with a Deep association metric (Deep SORT) is applied to track ship targets with high quality. Finally, the ship motion pixel is computed based on the bounding box information of the ship trajectories, at the same time, the ship speed is estimated according to the mapping relationship between image space and the real space. Exhaustive experiments are conducted on the various scenarios. Results verify that the proposed framework has an excellent performance with average speed measurement accuracy is above 93% in complex waters. This paper also paves a way to further predict ship traffic flow in water transportation.

Topics & Concepts

Computer scienceReal-time computingMinimum bounding boxsortDroneAutomatic Identification SystemArtificial intelligenceKey (lock)Computer visionSimulationMarine engineeringEngineeringImage (mathematics)GeneticsComputer securityBiologyInformation retrievalMaritime Navigation and SafetyShip Hydrodynamics and ManeuverabilityMaritime Transport Emissions and Efficiency