Ioannis Kontopoulos; Antonios Makris; Dimitris Zissis; Konstantinos Tserpes, 2021
22nd IEEE International Conference on Mobile Data Management (MDM), 2021
Nowadays, the increasing number of moving objects tracking sensors, results in the continuous flow of high-frequency and high-volume data streams. This phenomenon can especially be observed in the maritime domain since most of the vessels worldwide are now transmitting their positions periodically. Therefore, there is a strong necessity to extract meaningful information and identify mobility patterns from such tracking data in an automated fashion, eliminating the need for experts’ input. To this end, a novel approach is presented in this paper, which fuses the research fields of computer vision and trajectory classification, in order to deliver a high-precision classification of mobility patterns. The experimental results demonstrate that the classification performance of the proposed approach can reach an f1-score of over 95%.
Please reach out to us to discuss which Kpler offering will support your research project or academic study in the best possible and efficient way.