Fishing Trawler Event Detection: An Important Step Towards Digitization of Sustainable Fishing
Forfatter
Nordmo, Tor-Arne Schmidt; Ovesen, Aril Bernhard; Dagenborg, Håvard; Halvorsen, Pål; Riegler, Michael Alexander; Johansen, DagSammendrag
Detection of anomalies within data streams is an
important task that is useful for different important societal
challenges such as in traffic control and fraud detection. To
be able to perform anomaly detection, unsupervised analysis of
data is an important key factor, especially in domains where
obtaining labelled data is difficult or where the anomalies that
should be detected are often changing or are not clearly definable
at all. In this article, we present a complete machine learning
based pipeline for real-time unsupervised anomaly detection
that can handle different input data streams simultaneously. We
evaluate the usefulness of the proposed method using three wellknown datasets (fall detection, crime detection, and sport event
detection) and a completely new and unlabelled dataset within
the domain of commercial fishing. For all datasets, our method
outperforms the baselines significantly and is able to detect
relevant anomalies while simultaneously having low numbers of
false positives. In addition to the good detection performance,
the presented system can operate in real-time and is also very
flexible and easy to expand.
Forlag
IEEESitering
Nordmo, Ovesen, Dagenborg, Halvorsen, Riegler, Johansen: Fishing Trawler Event Detection: An Important Step Towards Digitization of Sustainable Fishing. In: Nichele, Aamodt, Misra, Mölder. 2023 3rd International Conference on Applied Artificial Intelligence (ICAPAI), 2023. IEEE conference proceedingsMetadata
Vis full innførselSamlinger
Copyright 2023 The Author(s)