Enhancing and comparing methods for the detection of fishing activity from Vessel Monitoring System data
Gilles Guillot, Pierre Benoit, Savvas Kinalis, Fran\c{c}ois Bastardie,, Valerio Bartolino

TL;DR
This paper introduces a new hidden Markov model-based method for detecting fishing activity from Vessel Monitoring System data, demonstrating improved accuracy and efficiency over existing approaches on Danish and Swedish datasets.
Contribution
A novel HMM approach for fishing activity detection that balances model complexity and computational efficiency, outperforming existing methods in accuracy.
Findings
Outperformed competitors with 6-15% higher accuracy
Maintained computational efficiency comparable to existing methods
Demonstrated applicability on large-scale real-world datasets
Abstract
Vessel Monitoring System (VMS) data provide information about speed and position of fishing vessels. This opens the door to methods of estimating and mapping fishing effort with a high level of detail. To addess this task, we propose a new method belonging to the class of hidden Markov models (HMM) that accounts for autocorrelation in time along the fishing events and offers a good trade-off between model complexity and computational efficiency. We carry out an objective comparison between this method and two competing approaches on a set of VMS data from Denmark for which the true activity is known from on-board sensors. The DMKMG approach proposed outperformed the competitors approach with 6% and 15% more accurate estimates in the vessel-by-vessel and trip-by-trip case, respectively. In addition, these better performances are not paid in terms of computation time. We also showcase our…
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Taxonomy
TopicsMarine and fisheries research · Water Quality Monitoring Technologies · Marine Bivalve and Aquaculture Studies
