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arxiv 2301.02211 v1 pith:B5TFSJ4C submitted 2023-01-05 cs.CY cs.CV

Teaching Computer Vision for Ecology

classification cs.CY cs.CV
keywords computervisionecologistsecologyteachingworkshopaccelerateacross
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Computer vision can accelerate ecology research by automating the analysis of raw imagery from sensors like camera traps, drones, and satellites. However, computer vision is an emerging discipline that is rarely taught to ecologists. This work discusses our experience teaching a diverse group of ecologists to prototype and evaluate computer vision systems in the context of an intensive hands-on summer workshop. We explain the workshop structure, discuss common challenges, and propose best practices. This document is intended for computer scientists who teach computer vision across disciplines, but it may also be useful to ecologists or other domain experts who are learning to use computer vision themselves.

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