This article elaborates on how machine learning (ML) can leverage the
solution of a contemporary problem related to the security of maritime domains.
The worldwide ``Illegal, Unreported, and Unregulated'' (IUU) fishing incidents
have led to serious environmental and economic consequences which involve
drastic changes in our ecosystems in addition to financial losses caused by the
depletion of natural resources. The Fisheries and Aquatic Department (FAD) of
the United Nation's Food and Agriculture Organization (FAO) issued a report
which indicated that the annual losses due to IUU fishing reached 25Billion.Thisimposesnegativeimpactsonthefuture−biodiversityofthemarineecosystemanddomesticGrossNationalProduct(GNP).Hence,robustinterceptionmechanismsareincreasinglyneededfordetectingandpursuingtheunrelentingillegalfishingincidentsinmaritimeterritories.Thisarticleaddressestheproblemofcoordinatingthemotionofafleetofmarinevessels(pursuers)tocatchanIUUvesselwhilestillinlocalwaters.Theproblemisformulatedasapursuer−evaderproblemthatistackledwithinanMLframework.Oneormorepursuers,suchaslawenforcementvessels,interceptanevader(i.e.,theillegalfishingship)usinganonlinereinforcementlearningmechanismthatisbasedonavalueiterationprocess.Itemploysreal−timenavigationmeasurementsoftheevadershipaswellasthoseofthepursuingvesselsandreturnsbackmodel−freeinterceptionstrategies.