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      A generalized approach for producing, quantifying, and validating citizen science data from wildlife images.

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          Abstract

          Citizen science has the potential to expand the scope and scale of research in ecology and conservation, but many professional researchers remain skeptical of data produced by nonexperts. We devised an approach for producing accurate, reliable data from untrained, nonexpert volunteers. On the citizen science website www.snapshotserengeti.org, more than 28,000 volunteers classified 1.51 million images taken in a large-scale camera-trap survey in Serengeti National Park, Tanzania. Each image was circulated to, on average, 27 volunteers, and their classifications were aggregated using a simple plurality algorithm. We validated the aggregated answers against a data set of 3829 images verified by experts and calculated 3 certainty metrics-level of agreement among classifications (evenness), fraction of classifications supporting the aggregated answer (fraction support), and fraction of classifiers who reported "nothing here" for an image that was ultimately classified as containing an animal (fraction blank)-to measure confidence that an aggregated answer was correct. Overall, aggregated volunteer answers agreed with the expert-verified data on 98% of images, but accuracy differed by species commonness such that rare species had higher rates of false positives and false negatives. Easily calculated analysis of variance and post-hoc Tukey tests indicated that the certainty metrics were significant indicators of whether each image was correctly classified or classifiable. Thus, the certainty metrics can be used to identify images for expert review. Bootstrapping analyses further indicated that 90% of images were correctly classified with just 5 volunteers per image. Species classifications based on the plurality vote of multiple citizen scientists can provide a reliable foundation for large-scale monitoring of African wildlife.

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          Species-diversity and pattern-diversity in the study of ecological succession.

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            Crowdsourcing the identification of organisms: A case-study of iSpot

            Abstract Accurate species identification is fundamental to biodiversity science, but the natural history skills required for this are neglected in formal education at all levels. In this paper we describe how the web application ispotnature.org and its sister site ispot.org.za (collectively, “iSpot”) are helping to solve this problem by combining learning technology with crowdsourcing to connect beginners with experts. Over 94% of observations submitted to iSpot receive a determination. External checking of a sample of 3,287 iSpot records verified > 92% of them. To mid 2014, iSpot crowdsourced the identification of 30,000 taxa (>80% at species level) in > 390,000 observations with a global community numbering > 42,000 registered participants. More than half the observations on ispotnature.org were named within an hour of submission. iSpot uses a unique, 9-dimensional reputation system to motivate and reward participants and to verify determinations. Taxon-specific reputation points are earned when a participant proposes an identification that achieves agreement from other participants, weighted by the agreers’ own reputation scores for the taxon. This system is able to discriminate effectively between competing determinations when two or more are proposed for the same observation. In 57% of such cases the reputation system improved the accuracy of the determination, while in the remainder it either improved precision (e.g. by adding a species name to a genus) or revealed false precision, for example where a determination to species level was not supported by the available evidence. We propose that the success of iSpot arises from the structure of its social network that efficiently connects beginners and experts, overcoming the social as well as geographic barriers that normally separate the two.
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              Author and article information

              Journal
              Conserv. Biol.
              Conservation biology : the journal of the Society for Conservation Biology
              Wiley-Blackwell
              1523-1739
              0888-8892
              Jun 2016
              : 30
              : 3
              Affiliations
              [1 ] Department of Ecology, Evolution and Behavior, University of Minnesota, Saint Paul, MN 55108, U.S.A.
              [2 ] Department of Physics, University of Oxford, Denys Wilkinson Building, Oxford, OX1 3RH, U.K.
              [3 ] Current address: Department of Organismic and Evolutionary Biology, Harvard University, Cambridge, MA 02138, U.S.A.
              Article
              10.1111/cobi.12695
              4999033
              27111678
              373460d1-12cb-46db-82a9-62887238c5ec
              History

              Snapshot Serengeti,Zooniverse,big data,camera traps,conjunto de datos,crowdsourcing,cámaras trampa,data aggregation,data validation,datos grandes,image processing,procesamiento de imágenes,validación de datos

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