Machine learning to classify animal species in camera trap images: Applications in ecology
Michael A. Tabak(University of Wyoming), Ryan S. Miller(United States Department of Agriculture), Ben Teton(The Nature Conservancy), David W. Wolfson(United States Department of Agriculture), Ryan K. Brook(University of Saskatchewan), Peter E. Schlichting(University of Georgia), Eric A. Odell(Colorado Parks and Wildlife), Michael D. White(The Nature Conservancy), Elizabeth G. Mandeville(University of Wyoming), Bethany Wight(Florida Fish and Wildlife Conservation Commission), Raoul K. Boughton(University of Memphis), Paul M. Lukacs(Life Services (United States)), Jesse S. Lewis(Arizona State University), Mohammad Sadegh Norouzzadeh(University of Wyoming), Anna K. Moeller(University of Montana), Eric S. Newkirk(Colorado Parks and Wildlife), Kurt C. VerCauteren(United States Department of Agriculture), Steven J. Sweeney(United States Department of Agriculture), Jacob S. Ivan(Colorado Parks and Wildlife), Nathan P. Snow(United States Department of Agriculture), Jeff Clune(Canadian Institute for Advanced Research), Joseph M. Halseth(United States Department of Agriculture), Paul A. Di Salvo(United States Department of Agriculture), James C. Beasley(University of Georgia)
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