A semi-supervised geometric-driven methodology for supervised fishing
activity detection on multi-source AIS tracking messages
- URL: http://arxiv.org/abs/2207.05514v1
- Date: Tue, 12 Jul 2022 13:17:37 GMT
- Title: A semi-supervised geometric-driven methodology for supervised fishing
activity detection on multi-source AIS tracking messages
- Authors: Martha Dais Ferreira, Gabriel Spadon, Amilcar Soares, Stan Matwin
- Abstract summary: This paper proposes a geometric-driven semi-supervised approach for fishing activity detection from AIS data.
We show how to explore the information included in the messages to extract features describing the geometry of the vessel route.
We propose a solution using recurrent neural networks on AIS data streams with roughly 87% of the overall $F$-score on the whole trajectories of 50 different unseen fishing vessels.
- Score: 11.969292109862856
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Automatic Identification System (AIS) messages are useful for tracking vessel
activity across oceans worldwide using radio links and satellite transceivers.
Such data plays a significant role in tracking vessel activity and mapping
mobility patterns such as those found in fishing. Accordingly, this paper
proposes a geometric-driven semi-supervised approach for fishing activity
detection from AIS data. Through the proposed methodology we show how to
explore the information included in the messages to extract features describing
the geometry of the vessel route. To this end, we leverage the unsupervised
nature of cluster analysis to label the trajectory geometry highlighting the
changes in the vessel's moving pattern which tends to indicate fishing
activity. The labels obtained by the proposed unsupervised approach are used to
detect fishing activities, which we approach as a time-series classification
task. In this context, we propose a solution using recurrent neural networks on
AIS data streams with roughly 87% of the overall $F$-score on the whole
trajectories of 50 different unseen fishing vessels. Such results are
accompanied by a broad benchmark study assessing the performance of different
Recurrent Neural Network (RNN) architectures. In conclusion, this work
contributes by proposing a thorough process that includes data preparation,
labeling, data modeling, and model validation. Therefore, we present a novel
solution for mobility pattern detection that relies upon unfolding the
trajectory in time and observing their inherent geometry.
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