2021
DOI: 10.3390/ijgi10040250
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A Deep Learning Streaming Methodology for Trajectory Classification

Abstract: Due to the vast amount of available tracking sensors in recent years, high-frequency and high-volume streams of data are generated every day. The maritime domain is no different as all larger vessels are obliged to be equipped with a vessel tracking system that transmits their location periodically. Consequently, automated methodologies able to extract meaningful information from high-frequency, large volumes of vessel tracking data need to be developed. The automatic identification of vessel mobility patterns… Show more

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Cited by 27 publications
(20 citation statements)
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References 73 publications
(113 reference statements)
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“…This denotes that the HD compression algorithm is less volatile and it is an indicator that it is more suitable for datasets in the maritime domain. This is further confirmed by research conducted in [17] where the proposed trajectory classification algorithm achieves a better classification performance when the HD is used in trajectories compared to the rest of the algorithms.…”
Section: Distance Evaluationsupporting
confidence: 66%
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“…This denotes that the HD compression algorithm is less volatile and it is an indicator that it is more suitable for datasets in the maritime domain. This is further confirmed by research conducted in [17] where the proposed trajectory classification algorithm achieves a better classification performance when the HD is used in trajectories compared to the rest of the algorithms.…”
Section: Distance Evaluationsupporting
confidence: 66%
“…To evaluate the amount of information loss that is posed by each compression algorithm, trajectory similarity measures were chosen (see Section IV) that are able to measure the distance between the original trajectory and the compressed one in terms of shape. The shape of the trajectory and the pattern that it forms can play an important role in the identification of illegal activities [3], [17]. Therefore, for each compression algorithm, we measured the distances D between each trajectory and its compressed counterpart and calculated the mean distance and the standard deviation of distance for the entirety of the dataset.…”
Section: Distance Evaluationmentioning
confidence: 99%
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“…The segmentation algorith in TRACLUS will be affected by trajectory scaling, and different scaling ratios will aff the segmentation accuracy. The scaling ratio in the experiment [1,2,3,5,10,15,20,25,30] TRACLUS r  . The segmentation accuracy of the TCSS algorithm affected by the angle threshold setting, and the angle threshold setting in the experime…”
Section: Results Of Algorithm Comparisonmentioning
confidence: 99%
“…Trajectory data contains rich information of target space-time characteristics. Through data mining and depth analysis, we can find high-value information, such as target activity law, behavior characteristics, interest habits, abnormal changes [1][2][3][4][5][6], etc. However, the rapid growth of trajectory data also brings many challenges to the data service based on the target space-time location, including the increase in data transmission load, the pressure of data storage, the reduction of data query efficiency and the decline of data analysis performance [7].…”
Section: Introductionmentioning
confidence: 99%