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arxiv 2212.04030 v1 pith:ZOYGPGDA submitted 2022-12-08 cs.CV cs.AI

Analysis of Deep Learning Architectures and Efficacy of Detecting Forest Fires

classification cs.CV cs.AI
keywords researchdatasetscomputerdomainfiresforestlearningmethods
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The aim of this research is to review the state of computer vision as applied to combatting forest fires. My motivation to research this topic comes from the urgency with which new participants and stakeholders require guidance in this field. One of these new stakeholder groups are practitioners of machine learning that lack domain expertise. Introducing these new entrants to domain specific datasets and methods is critical to supporting this aim as general computer vision datasets are insufficient to support specialized research initiatives. The overarching aim of the research is to introduce datasets and methods to make them more accessible to the community.

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