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  • How it was trained: 

    • The model was trained via supervised learning on both fishing and dark rendezvous labels in order to improve model accuracy over the previous binary models.

    • Training data includes a combination of expert annotated data and for fishing events, ground-truthed data from fisheries observers. 

    • The model was trained on many types of fishing behavior, including trawling, seining, long-lining, and squid jigging. Notably not on this list, though they may be picked up for their similarities with other fishing methods: gill netting, spear fishing, pole & line. 

    • See Appendix B for additional information.

  • The main characteristics of the vessel movement the model considers are:

    • How the vessel’s speed is changing

    • How the vessel is turning and maneuvering 

    • Depth of the ocean / bathymetry 

  • The model needs a minimum amount of historical movement in order to determine the vessel is fishing right now. Depending on the movement of a vessel at that particular time, this could mean anywhere from 1 to 40+ hours of past movement to evaluate whether its current behavior is fishing (see Appendix A).

  • The model does not take vessel type into account specifically so that vessels that display fishing activity though they are not transmitting themselves as fishing vessels can be found.

  • The event icon, whether fishing or dark rendezvous, is not placed on every event, just on the first behavior detected in that 24 hr period for that vessel. 

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